Gaussian similarity-based adaptive dynamic label assignment for tiny object detection
Benefiting from the advanced deep learning techniques, significant achievements have been made in generic object detection. Tiny object detection (TOD) is a challenging task in computer vision due to the low resolution, insufficient geometric cues, and high noise levels. A recent trend for detectors...
- Autores:
-
Fu, Ronghao
Chen, Chengcheng
Yan, Shuang
Heidari, Ali Asghar
Wang, Xianchang
Escorcia-Gutierrez, José
Mansour, Romany F
Chen, Huiling
- Tipo de recurso:
- Article of investigation
- Fecha de publicación:
- 2023
- Institución:
- Corporación Universidad de la Costa
- Repositorio:
- REDICUC - Repositorio CUC
- Idioma:
- eng
- OAI Identifier:
- oai:repositorio.cuc.edu.co:11323/14080
- Acceso en línea:
- https://hdl.handle.net/11323/14080
https://repositorio.cuc.edu.co/
- Palabra clave:
- Tiny object detection
Gaussian
Label assignment
- Rights
- openAccess
- License
- Atribución 4.0 Internacional (CC BY 4.0)
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|
dc.title.eng.fl_str_mv |
Gaussian similarity-based adaptive dynamic label assignment for tiny object detection |
title |
Gaussian similarity-based adaptive dynamic label assignment for tiny object detection |
spellingShingle |
Gaussian similarity-based adaptive dynamic label assignment for tiny object detection Tiny object detection Gaussian Label assignment |
title_short |
Gaussian similarity-based adaptive dynamic label assignment for tiny object detection |
title_full |
Gaussian similarity-based adaptive dynamic label assignment for tiny object detection |
title_fullStr |
Gaussian similarity-based adaptive dynamic label assignment for tiny object detection |
title_full_unstemmed |
Gaussian similarity-based adaptive dynamic label assignment for tiny object detection |
title_sort |
Gaussian similarity-based adaptive dynamic label assignment for tiny object detection |
dc.creator.fl_str_mv |
Fu, Ronghao Chen, Chengcheng Yan, Shuang Heidari, Ali Asghar Wang, Xianchang Escorcia-Gutierrez, José Mansour, Romany F Chen, Huiling |
dc.contributor.author.none.fl_str_mv |
Fu, Ronghao Chen, Chengcheng Yan, Shuang Heidari, Ali Asghar Wang, Xianchang Escorcia-Gutierrez, José Mansour, Romany F Chen, Huiling |
dc.subject.proposal.eng.fl_str_mv |
Tiny object detection Gaussian Label assignment |
topic |
Tiny object detection Gaussian Label assignment |
description |
Benefiting from the advanced deep learning techniques, significant achievements have been made in generic object detection. Tiny object detection (TOD) is a challenging task in computer vision due to the low resolution, insufficient geometric cues, and high noise levels. A recent trend for detectors is introducing more granular label assignment strategies to provide promising supervision information for classification and regression. However, most previous Intersection-Over-Union (IoU) based methods suffer from two main drawbacks, including (1) low tolerance of IoU for bounding box deviations in tiny objects and (2) deficient guidance for optimization caused by inter-sample and intra-sample imbalance. We propose two novel components to address these problems: the Gaussian probabilistic distribution-based fuzzy similarity metric (GPM) and the adaptive dynamic anchor mining strategy (ADAS). GPM aims to address the issue of inaccurate similarity measurement between small bounding boxes and pre-defined anchors, providing a more accurate basis for label assignment. ADAS adopts a dynamically adjusted strategy for label assignment to address the distribution bias between positive and negative samples, ensuring that the label assignment is consistent with the distribution of objects in the image. Extensive experiments are conducted on AI-TODv2 and other tiny object detection datasets to evaluate the proposed ADASGPM method’s performance. The results demonstrate that incorporating ADAS-GPM into an anchorbased object detector yields significant outperformance over state-of-the-art methods on the challenging AI-TODv2 benchmark. The proposed ADAS-GPM method exhibits good results, clearly demonstrating its validity and potential. |
publishDate |
2023 |
dc.date.issued.none.fl_str_mv |
2023-07-28 |
dc.date.accessioned.none.fl_str_mv |
2025-04-04T15:05:28Z |
dc.date.available.none.fl_str_mv |
2025-04-04T15:05:28Z |
dc.type.none.fl_str_mv |
Artículo de revista |
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http://purl.org/coar/version/c_970fb48d4fbd8a85 |
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dc.identifier.citation.none.fl_str_mv |
Ronghao Fu, Chengcheng Chen, Shuang Yan, Ali Asghar Heidari, Xianchang Wang, José Escorcia-Gutierrez, Romany F. Mansour, Huiling Chen, Gaussian similarity-based adaptive dynamic label assignment for tiny object detection, Neurocomputing, Volume 543, 2023, 126285, ISSN 0925-2312, https://doi.org/10.1016/j.neucom.2023.126285. |
dc.identifier.issn.none.fl_str_mv |
0925-2312 |
dc.identifier.uri.none.fl_str_mv |
https://hdl.handle.net/11323/14080 |
dc.identifier.doi.none.fl_str_mv |
10.1016/j.neucom.2023.126285. |
dc.identifier.eissn.none.fl_str_mv |
1872-8286 |
dc.identifier.instname.none.fl_str_mv |
Corporación Universidad de la Costa |
dc.identifier.reponame.none.fl_str_mv |
REDICUC - Repositorio CUC |
dc.identifier.repourl.none.fl_str_mv |
https://repositorio.cuc.edu.co/ |
identifier_str_mv |
Ronghao Fu, Chengcheng Chen, Shuang Yan, Ali Asghar Heidari, Xianchang Wang, José Escorcia-Gutierrez, Romany F. Mansour, Huiling Chen, Gaussian similarity-based adaptive dynamic label assignment for tiny object detection, Neurocomputing, Volume 543, 2023, 126285, ISSN 0925-2312, https://doi.org/10.1016/j.neucom.2023.126285. 0925-2312 10.1016/j.neucom.2023.126285. 1872-8286 Corporación Universidad de la Costa REDICUC - Repositorio CUC |
url |
https://hdl.handle.net/11323/14080 https://repositorio.cuc.edu.co/ |
dc.language.iso.none.fl_str_mv |
eng |
language |
eng |
dc.relation.ispartofjournal.none.fl_str_mv |
Neurocomputing |
dc.relation.references.none.fl_str_mv |
E.H. Adelson, P.J. Burt, C.H. Anderson, J.M. Ogden, J.R. Bergen, Pyramid methods in image processing, 1984. Y. Bai, Y. Zhang, M. Ding, B. Ghanem, Finding tiny faces in the wild with generative adversarial network, 2018 IEEE/CVF Conference on Computer Vision and Pattern Recognition (2018) 21–30. S. Bell, C.L. Zitnick, K. Bala, R.B. Girshick, Inside-outside net: Detecting objects in context with skip pooling and recurrent neural networks, 2016 IEEE Conference on Computer Vision and Pattern Recognition (CVPR) (2015) 2874– 2883. A. Bhattacharyya, On a measure of divergence between two statistical populations defined by their probability distributions, 1943. A. Bochkovskiy, C.Y. Wang, H.Y.M. Liao, Yolov4: Optimal speed and accuracy of object detection, ArXiv abs/2004.10934 (2020). B. Bosquet, D. Cores, L. Seidenari, V.M. Brea, M. Mucientes, A. Bimbo, A full data augmentation pipeline for small object detection based on generative adversarial networks, Pattern Recogn. (2022). Z. Cai, N. Vasconcelos, Cascade r-cnn: High quality object detection and instance segmentation, IEEE Trans. Pattern Anal. Mach. Intell. 43 (2021) 1483– 1498. B. Cao, S. Fan, J. Zhao, S. Tian, Z. Zheng, Y. Yan, P. Yang, Large-scale manyobjective deployment optimization of edge servers, IEEE Trans. Intell. Transp. Syst. 22 (2021) 3841–3849. B. Cao, M. Li, X. Liu, J. Zhao, W. Cao, Z. Lv, Many-objective deployment optimization for a drone-assisted camera network, IEEE Trans. Network Sci. Eng. 8 (2021) 2756–2764. G. Cao, X. Xie, W. Yang, Q. Liao, G. Shi, J. Wu, Feature-fused ssd: fast detection for small objects, in: International Conference on Graphic and Image Processing, 2018. N. Carion, F. Massa, G. Synnaeve, N. Usunier, A. Kirillov, S. Zagoruyko, End-toend object detection with transformers, ArXiv (2020), abs/2005.12872. Chen, C., Liu, M.Y., Tuzel, O., Xiao, J., 2017. R-cnn for small object detection, in: Computer Vision–ACCV 2016: 13th Asian Conference on Computer Vision, Taipei, Taiwan, November 20–24, 2016, Revised Selected Papers, Part V 13, Springer. pp. 214–230. J. Chen, H. Mai, L. Luo, X. Chen, K. Wu, Effective feature fusion network in bifpn for small object detection, 2021 IEEE International Conference on Image Processing (ICIP) (2021) 699–703. K. Chen, J. Wang, J. Pang, Y. Cao, Y. Xiong, X. Li, S. Sun, W. Feng, Z. Liu, J. Xu, Z. Zhang, D. Cheng, C. Zhu, T. Cheng, Q. Zhao, B. Li, X. Lu, R. Zhu, Y. Wu, J. Dai, J. Wang, J. Shi, W. Ouyang, C.C. Loy, D. Lin, Mmdetection: Open mmlab detection toolbox and benchmark, ArXiv (2019), abs/1906.07155. P. Chen, J. Pei, W. Lu, M. Li, A deep reinforcement learning based method for real-time path planning and dynamic obstacle avoidance, Neurocomputing 497 (2022) 64–75. T. Chen, S. Kornblith, M. Norouzi, G.E. Hinton, A simple framework for contrastive learning of visual representations, ArXiv (2020), abs/2002.05709. Chen, Z., Yang, C., Li, Q., Zhao, F., Zha, Z., Wu, F., 2021b. Disentangle your dense object detector. Proceedings of the 29th ACM International Conference on Multimedia. G. Cheng, X. Yuan, X. Yao, K. Yan, Q. Zeng, J. Han, Towards large-scale small object detection: Survey and benchmarks, ArXiv (2022), abs/2207.14096. L. Courtrai, M.T. Pham, S. Lefèvre, Small object detection in remote sensing images based on super-resolution with auxiliary generative adversarial networks, Remote. Sens. 12 (2020) 3152. L. Cui, Mdssd: multi-scale deconvolutional single shot detector for small objects, Sci. China Inf. Sci. 63 (2020) 1–3. |
dc.relation.citationendpage.none.fl_str_mv |
14 |
dc.relation.citationstartpage.none.fl_str_mv |
1 |
dc.relation.citationissue.none.fl_str_mv |
126285 |
dc.relation.citationvolume.none.fl_str_mv |
543 |
dc.rights.eng.fl_str_mv |
© 2023 Elsevier B.V. |
dc.rights.license.none.fl_str_mv |
Atribución 4.0 Internacional (CC BY 4.0) |
dc.rights.uri.none.fl_str_mv |
https://creativecommons.org/licenses/by/4.0/ |
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info:eu-repo/semantics/openAccess |
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Atribución 4.0 Internacional (CC BY 4.0) © 2023 Elsevier B.V. https://creativecommons.org/licenses/by/4.0/ http://purl.org/coar/access_right/c_abf2 |
eu_rights_str_mv |
openAccess |
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14 páginas |
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Elsevier B.V. |
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Netherlands |
publisher.none.fl_str_mv |
Elsevier B.V. |
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https://www.sciencedirect.com/science/article/pii/S0925231223004083?pes=vor&utm_source=scopus&getft_integrator=scopus |
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Atribución 4.0 Internacional (CC BY 4.0)© 2023 Elsevier B.V.https://creativecommons.org/licenses/by/4.0/info:eu-repo/semantics/openAccesshttp://purl.org/coar/access_right/c_abf2Fu, RonghaoChen, ChengchengYan, ShuangHeidari, Ali AsgharWang, XianchangEscorcia-Gutierrez, Josévirtual::1004-1Mansour, Romany FChen, Huiling2025-04-04T15:05:28Z2025-04-04T15:05:28Z2023-07-28Ronghao Fu, Chengcheng Chen, Shuang Yan, Ali Asghar Heidari, Xianchang Wang, José Escorcia-Gutierrez, Romany F. Mansour, Huiling Chen, Gaussian similarity-based adaptive dynamic label assignment for tiny object detection, Neurocomputing, Volume 543, 2023, 126285, ISSN 0925-2312, https://doi.org/10.1016/j.neucom.2023.126285.0925-2312https://hdl.handle.net/11323/1408010.1016/j.neucom.2023.126285.1872-8286Corporación Universidad de la CostaREDICUC - Repositorio CUChttps://repositorio.cuc.edu.co/Benefiting from the advanced deep learning techniques, significant achievements have been made in generic object detection. Tiny object detection (TOD) is a challenging task in computer vision due to the low resolution, insufficient geometric cues, and high noise levels. A recent trend for detectors is introducing more granular label assignment strategies to provide promising supervision information for classification and regression. However, most previous Intersection-Over-Union (IoU) based methods suffer from two main drawbacks, including (1) low tolerance of IoU for bounding box deviations in tiny objects and (2) deficient guidance for optimization caused by inter-sample and intra-sample imbalance. We propose two novel components to address these problems: the Gaussian probabilistic distribution-based fuzzy similarity metric (GPM) and the adaptive dynamic anchor mining strategy (ADAS). GPM aims to address the issue of inaccurate similarity measurement between small bounding boxes and pre-defined anchors, providing a more accurate basis for label assignment. ADAS adopts a dynamically adjusted strategy for label assignment to address the distribution bias between positive and negative samples, ensuring that the label assignment is consistent with the distribution of objects in the image. Extensive experiments are conducted on AI-TODv2 and other tiny object detection datasets to evaluate the proposed ADASGPM method’s performance. The results demonstrate that incorporating ADAS-GPM into an anchorbased object detector yields significant outperformance over state-of-the-art methods on the challenging AI-TODv2 benchmark. The proposed ADAS-GPM method exhibits good results, clearly demonstrating its validity and potential.14 páginasapplication/pdfengElsevier B.V.Netherlandshttps://www.sciencedirect.com/science/article/pii/S0925231223004083?pes=vor&utm_source=scopus&getft_integrator=scopusGaussian similarity-based adaptive dynamic label assignment for tiny object detectionArtículo de revistahttp://purl.org/coar/resource_type/c_2df8fbb1Textinfo:eu-repo/semantics/articlehttp://purl.org/redcol/resource_type/ARTinfo:eu-repo/semantics/publishedVersionhttp://purl.org/coar/version/c_970fb48d4fbd8a85NeurocomputingE.H. Adelson, P.J. Burt, C.H. Anderson, J.M. Ogden, J.R. Bergen, Pyramid methods in image processing, 1984.Y. Bai, Y. Zhang, M. Ding, B. Ghanem, Finding tiny faces in the wild with generative adversarial network, 2018 IEEE/CVF Conference on Computer Vision and Pattern Recognition (2018) 21–30.S. Bell, C.L. Zitnick, K. Bala, R.B. Girshick, Inside-outside net: Detecting objects in context with skip pooling and recurrent neural networks, 2016 IEEE Conference on Computer Vision and Pattern Recognition (CVPR) (2015) 2874– 2883.A. Bhattacharyya, On a measure of divergence between two statistical populations defined by their probability distributions, 1943.A. Bochkovskiy, C.Y. Wang, H.Y.M. Liao, Yolov4: Optimal speed and accuracy of object detection, ArXiv abs/2004.10934 (2020).B. Bosquet, D. Cores, L. Seidenari, V.M. Brea, M. Mucientes, A. Bimbo, A full data augmentation pipeline for small object detection based on generative adversarial networks, Pattern Recogn. (2022).Z. Cai, N. Vasconcelos, Cascade r-cnn: High quality object detection and instance segmentation, IEEE Trans. Pattern Anal. Mach. Intell. 43 (2021) 1483– 1498.B. Cao, S. Fan, J. Zhao, S. Tian, Z. Zheng, Y. Yan, P. Yang, Large-scale manyobjective deployment optimization of edge servers, IEEE Trans. Intell. Transp. Syst. 22 (2021) 3841–3849.B. Cao, M. Li, X. Liu, J. Zhao, W. Cao, Z. Lv, Many-objective deployment optimization for a drone-assisted camera network, IEEE Trans. Network Sci. Eng. 8 (2021) 2756–2764.G. Cao, X. Xie, W. Yang, Q. Liao, G. Shi, J. Wu, Feature-fused ssd: fast detection for small objects, in: International Conference on Graphic and Image Processing, 2018.N. Carion, F. Massa, G. Synnaeve, N. Usunier, A. Kirillov, S. Zagoruyko, End-toend object detection with transformers, ArXiv (2020), abs/2005.12872.Chen, C., Liu, M.Y., Tuzel, O., Xiao, J., 2017. R-cnn for small object detection, in: Computer Vision–ACCV 2016: 13th Asian Conference on Computer Vision, Taipei, Taiwan, November 20–24, 2016, Revised Selected Papers, Part V 13, Springer. pp. 214–230.J. Chen, H. Mai, L. Luo, X. Chen, K. Wu, Effective feature fusion network in bifpn for small object detection, 2021 IEEE International Conference on Image Processing (ICIP) (2021) 699–703.K. Chen, J. Wang, J. Pang, Y. Cao, Y. Xiong, X. Li, S. Sun, W. Feng, Z. Liu, J. Xu, Z. Zhang, D. Cheng, C. Zhu, T. Cheng, Q. Zhao, B. Li, X. Lu, R. Zhu, Y. Wu, J. Dai, J. Wang, J. Shi, W. Ouyang, C.C. Loy, D. Lin, Mmdetection: Open mmlab detection toolbox and benchmark, ArXiv (2019), abs/1906.07155.P. Chen, J. Pei, W. Lu, M. Li, A deep reinforcement learning based method for real-time path planning and dynamic obstacle avoidance, Neurocomputing 497 (2022) 64–75.T. Chen, S. Kornblith, M. Norouzi, G.E. Hinton, A simple framework for contrastive learning of visual representations, ArXiv (2020), abs/2002.05709.Chen, Z., Yang, C., Li, Q., Zhao, F., Zha, Z., Wu, F., 2021b. Disentangle your dense object detector. Proceedings of the 29th ACM International Conference on Multimedia.G. Cheng, X. Yuan, X. Yao, K. Yan, Q. Zeng, J. Han, Towards large-scale small object detection: Survey and benchmarks, ArXiv (2022), abs/2207.14096.L. Courtrai, M.T. Pham, S. Lefèvre, Small object detection in remote sensing images based on super-resolution with auxiliary generative adversarial networks, Remote. Sens. 12 (2020) 3152.L. Cui, Mdssd: multi-scale deconvolutional single shot detector for small objects, Sci. China Inf. Sci. 63 (2020) 1–3.141126285543Tiny object detectionGaussianLabel assignmentPublication07ebcf7d-aa36-4696-8947-aee32fe8f299virtual::1004-107ebcf7d-aa36-4696-8947-aee32fe8f299virtual::1004-10000-0003-0518-3187virtual::1004-1ORIGINALGaussian similarity-based adaptive dynamic label assignment for tiny.pdfGaussian similarity-based adaptive dynamic label assignment for tiny.pdfapplication/pdf4964572https://repositorio.cuc.edu.co/bitstreams/3e227d40-caf7-45ee-81e3-4d0ecd6b6c09/download6c7696ae68db00c5c1ec62b280f6ba84MD51LICENSElicense.txtlicense.txttext/plain; charset=utf-815543https://repositorio.cuc.edu.co/bitstreams/53b6ae77-19ec-45ab-9eb3-610ccd3c7c39/download73a5432e0b76442b22b026844140d683MD52TEXTGaussian similarity-based adaptive dynamic label assignment for tiny.pdf.txtGaussian similarity-based adaptive dynamic label assignment for tiny.pdf.txtExtracted 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ara ejercer estos derechos sobre la Obra tal y como se indica a continuación:</p>
    <ol type="a">
      <li>Reproducir la Obra, incorporar la Obra en una o más Obras Colectivas, y reproducir la Obra incorporada en las Obras Colectivas.</li>
      <li>Distribuir copias o fonogramas de las Obras, exhibirlas públicamente, ejecutarlas públicamente y/o ponerlas a disposición pública, incluyéndolas como incorporadas en Obras Colectivas, según corresponda.</li>
      <li>Distribuir copias de las Obras Derivadas que se generen, exhibirlas públicamente, ejecutarlas públicamente y/o ponerlas a disposición pública.</li>
    </ol>
    <p>Los derechos mencionados anteriormente pueden ser ejercidos en todos los medios y formatos, actualmente conocidos o que se inventen en el futuro. Los derechos antes mencionados incluyen el derecho a realizar dichas modificaciones en la medida que sean técnicamente necesarias para ejercer los derechos en otro medio o formatos, pero de otra manera usted no está autorizado para realizar obras derivadas. Todos los derechos no otorgados expresamente por el Licenciante quedan por este medio reservados, incluyendo pero sin limitarse a aquellos que se mencionan en las secciones 4(d) y 4(e).</p>
  </li>
  <br/>
  <li>
    Restricciones.
    <p>La licencia otorgada en la anterior Sección 3 está expresamente sujeta y limitada por las siguientes restricciones:</p>
    <ol type="a">
      <li>Usted puede distribuir, exhibir públicamente, ejecutar públicamente, o poner a disposición pública la Obra sólo bajo las condiciones de esta Licencia, y Usted debe incluir una copia de esta licencia o del Identificador Universal de Recursos de la misma con cada copia de la Obra que distribuya, exhiba públicamente, ejecute públicamente o ponga a disposición pública. No es posible ofrecer o imponer ninguna condición sobre la Obra que altere o limite las condiciones de esta Licencia o el ejercicio de los derechos de los destinatarios otorgados en este documento. No es posible sublicenciar la Obra. Usted debe mantener intactos todos los avisos que hagan referencia a esta Licencia y a la cláusula de limitación de garantías. Usted no puede distribuir, exhibir públicamente, ejecutar públicamente, o poner a disposición pública la Obra con alguna medida tecnológica que controle el acceso o la utilización de ella de una forma que sea inconsistente con las condiciones de esta Licencia. Lo anterior se aplica a la Obra incorporada a una Obra Colectiva, pero esto no exige que la Obra Colectiva aparte de la obra misma quede sujeta a las condiciones de esta Licencia. Si Usted crea una Obra Colectiva, previo aviso de cualquier Licenciante debe, en la medida de lo posible, eliminar de la Obra Colectiva cualquier referencia a dicho Licenciante o al Autor Original, según lo solicitado por el Licenciante y conforme lo exige la cláusula 4(c).</li>
      <li>Usted no puede ejercer ninguno de los derechos que le han sido otorgados en la Sección 3 precedente de modo que estén principalmente destinados o directamente dirigidos a conseguir un provecho comercial o una compensación monetaria privada. El intercambio de la Obra por otras obras protegidas por derechos de autor, ya sea a través de un sistema para compartir archivos digitales (digital file-sharing) o de cualquier otra manera no será considerado como estar destinado principalmente o dirigido directamente a conseguir un provecho comercial o una compensación monetaria privada, siempre que no se realice un pago mediante una compensación monetaria en relación con el intercambio de obras protegidas por el derecho de autor.</li>
      <li>Si usted distribuye, exhibe públicamente, ejecuta públicamente o ejecuta públicamente en forma digital la Obra o cualquier Obra Derivada u Obra Colectiva, Usted debe mantener intacta toda la información de derecho de autor de la Obra y proporcionar, de forma razonable según el medio o manera que Usted esté utilizando: (i) el nombre del Autor Original si está provisto (o seudónimo, si fuere aplicable), y/o (ii) el nombre de la parte o las partes que el Autor Original y/o el Licenciante hubieren designado para la atribución (v.g., un instituto patrocinador, editorial, publicación) en la información de los derechos de autor del Licenciante, términos de servicios o de otras formas razonables; el título de la Obra si está provisto; en la medida de lo razonablemente factible y, si está provisto, el Identificador Uniforme de Recursos (Uniform Resource Identifier) que el Licenciante especifica para ser asociado con la Obra, salvo que tal URI no se refiera a la nota sobre los derechos de autor o a la información sobre el licenciamiento de la Obra; y en el caso de una Obra Derivada, atribuir el crédito identificando el uso de la Obra en la Obra Derivada (v.g., "Traducción Francesa de la Obra del Autor Original," o "Guión Cinematográfico basado en la Obra original del Autor Original"). Tal crédito puede ser implementado de cualquier forma razonable; en el caso, sin embargo, de Obras Derivadas u Obras Colectivas, tal crédito aparecerá, como mínimo, donde aparece el crédito de cualquier otro autor comparable y de una manera, al menos, tan destacada como el crédito de otro autor comparable.</li>
      <li>
        Para evitar toda confusión, el Licenciante aclara que, cuando la obra es una composición musical:
        <ol type="i">
          <li>Regalías por interpretación y ejecución bajo licencias generales. El Licenciante se reserva el derecho exclusivo de autorizar la ejecución pública o la ejecución pública digital de la obra y de recolectar, sea individualmente o a través de una sociedad de gestión colectiva de derechos de autor y derechos conexos (por ejemplo, SAYCO), las regalías por la ejecución pública o por la ejecución pública digital de la obra (por ejemplo Webcast) licenciada bajo licencias generales, si la interpretación o ejecución de la obra está primordialmente orientada por o dirigida a la obtención de una ventaja comercial o una compensación monetaria privada.</li>
          <li>Regalías por Fonogramas. El Licenciante se reserva el derecho exclusivo de recolectar, individualmente o a través de una sociedad de gestión colectiva de derechos de autor y derechos conexos (por ejemplo, los consagrados por la SAYCO), una agencia de derechos musicales o algún agente designado, las regalías por cualquier fonograma que Usted cree a partir de la obra (“versión cover”) y distribuya, en los términos del régimen de derechos de autor, si la creación o distribución de esa versión cover está primordialmente destinada o dirigida a obtener una ventaja comercial o una compensación monetaria privada.</li>
        </ol>
      </li>
      <li>Gestión de Derechos de Autor sobre Interpretaciones y Ejecuciones Digitales (WebCasting). Para evitar toda confusión, el Licenciante aclara que, cuando la obra sea un fonograma, el Licenciante se reserva el derecho exclusivo de autorizar la ejecución pública digital de la obra (por ejemplo, webcast) y de recolectar, individualmente o a través de una sociedad de gestión colectiva de derechos de autor y derechos conexos (por ejemplo, ACINPRO), las regalías por la ejecución pública digital de la obra (por ejemplo, webcast), sujeta a las disposiciones aplicables del régimen de Derecho de Autor, si esta ejecución pública digital está primordialmente dirigida a obtener una ventaja comercial o una compensación monetaria privada.</li>
    </ol>
  </li>
  <br/>
  <li>
    Representaciones, Garantías y Limitaciones de Responsabilidad.
    <p>A MENOS QUE LAS PARTES LO ACORDARAN DE OTRA FORMA POR ESCRITO, EL LICENCIANTE OFRECE LA OBRA (EN EL ESTADO EN EL QUE SE ENCUENTRA) “TAL CUAL”, SIN BRINDAR GARANTÍAS DE CLASE ALGUNA RESPECTO DE LA OBRA, YA SEA EXPRESA, IMPLÍCITA, LEGAL O CUALQUIERA OTRA, INCLUYENDO, SIN LIMITARSE A ELLAS, GARANTÍAS DE TITULARIDAD, COMERCIABILIDAD, ADAPTABILIDAD O ADECUACIÓN A PROPÓSITO DETERMINADO, AUSENCIA DE INFRACCIÓN, DE AUSENCIA DE DEFECTOS LATENTES O DE OTRO TIPO, O LA PRESENCIA O AUSENCIA DE ERRORES, SEAN O NO DESCUBRIBLES (PUEDAN O NO SER ESTOS DESCUBIERTOS). ALGUNAS JURISDICCIONES NO PERMITEN LA EXCLUSIÓN DE GARANTÍAS IMPLÍCITAS, EN CUYO CASO ESTA EXCLUSIÓN PUEDE NO APLICARSE A USTED.</p>
  </li>
  <br/>
  <li>
    Limitación de responsabilidad.
    <p>A MENOS QUE LO EXIJA EXPRESAMENTE LA LEY APLICABLE, EL LICENCIANTE NO SERÁ RESPONSABLE ANTE USTED POR DAÑO ALGUNO, SEA POR RESPONSABILIDAD EXTRACONTRACTUAL, PRECONTRACTUAL O CONTRACTUAL, OBJETIVA O SUBJETIVA, SE TRATE DE DAÑOS MORALES O PATRIMONIALES, DIRECTOS O INDIRECTOS, PREVISTOS O IMPREVISTOS PRODUCIDOS POR EL USO DE ESTA LICENCIA O DE LA OBRA, AUN CUANDO EL LICENCIANTE HAYA SIDO ADVERTIDO DE LA POSIBILIDAD DE DICHOS DAÑOS. ALGUNAS LEYES NO PERMITEN LA EXCLUSIÓN DE CIERTA RESPONSABILIDAD, EN CUYO CASO ESTA EXCLUSIÓN PUEDE NO APLICARSE A USTED.</p>
  </li>
  <br/>
  <li>
    Término.
    <ol type="a">
      <li>Esta Licencia y los derechos otorgados en virtud de ella terminarán automáticamente si Usted infringe alguna condición establecida en ella. Sin embargo, los individuos o entidades que han recibido Obras Derivadas o Colectivas de Usted de conformidad con esta Licencia, no verán terminadas sus licencias, siempre que estos individuos o entidades sigan cumpliendo íntegramente las condiciones de estas licencias. Las Secciones 1, 2, 5, 6, 7, y 8 subsistirán a cualquier terminación de esta Licencia.</li>
      <li>Sujeta a las condiciones y términos anteriores, la licencia otorgada aquí es perpetua (durante el período de vigencia de los derechos de autor de la obra). No obstante lo anterior, el Licenciante se reserva el derecho a publicar y/o estrenar la Obra bajo condiciones de licencia diferentes o a dejar de distribuirla en los términos de esta Licencia en cualquier momento; en el entendido, sin embargo, que esa elección no servirá para revocar esta licencia o que deba ser otorgada , bajo los términos de esta licencia), y esta licencia continuará en pleno vigor y efecto a menos que sea terminada como se expresa atrás. La Licencia revocada continuará siendo plenamente vigente y efectiva si no se le da término en las condiciones indicadas anteriormente.</li>
    </ol>
  </li>
  <br/>
  <li>
    Varios.
    <ol type="a">
      <li>Cada vez que Usted distribuya o ponga a disposición pública la Obra o una Obra Colectiva, el Licenciante ofrecerá al destinatario una licencia en los mismos términos y condiciones que la licencia otorgada a Usted bajo esta Licencia.</li>
      <li>Si alguna disposición de esta Licencia resulta invalidada o no exigible, según la legislación vigente, esto no afectará ni la validez ni la aplicabilidad del resto de condiciones de esta Licencia y, sin acción adicional por parte de los sujetos de este acuerdo, aquélla se entenderá reformada lo mínimo necesario para hacer que dicha disposición sea válida y exigible.</li>
      <li>Ningún término o disposición de esta Licencia se estimará renunciada y ninguna violación de ella será consentida a menos que esa renuncia o consentimiento sea otorgado por escrito y firmado por la parte que renuncie o consienta.</li>
      <li>Esta Licencia refleja el acuerdo pleno entre las partes respecto a la Obra aquí licenciada. No hay arreglos, acuerdos o declaraciones respecto a la Obra que no estén especificados en este documento. El Licenciante no se verá limitado por ninguna disposición adicional que pueda surgir en alguna comunicación emanada de Usted. Esta Licencia no puede ser modificada sin el consentimiento mutuo por escrito del Licenciante y Usted.</li>
    </ol>
  </li>
  <br/>
</ol>
 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