A study on giant panda recognition based on images of a large proportion of captive pandas

As a highly endangered species, the giant panda (panda) has attracted significant attention in the past decades. Considerable efforts have been put on panda conservation and reproduction, offering the promising outcome of maintaining the population size of pandas. To evaluate the effectiveness of co...

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Main Authors: Chen, Peng, Swarup, Pranjal, Matkowski, Wojciech Michal, Kong, Adams Wai Kin, Han, Su, Zhang, Zhihe, Rong, Hou
Other Authors: School of Computer Science and Engineering
Format: Article
Language:English
Published: 2021
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Online Access:https://hdl.handle.net/10356/148620
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Institution: Nanyang Technological University
Language: English
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spelling sg-ntu-dr.10356-1486202023-04-04T03:09:12Z A study on giant panda recognition based on images of a large proportion of captive pandas Chen, Peng Swarup, Pranjal Matkowski, Wojciech Michal Kong, Adams Wai Kin Han, Su Zhang, Zhihe Rong, Hou School of Computer Science and Engineering Engineering::Computer science and engineering Giant Panda Individual Identification As a highly endangered species, the giant panda (panda) has attracted significant attention in the past decades. Considerable efforts have been put on panda conservation and reproduction, offering the promising outcome of maintaining the population size of pandas. To evaluate the effectiveness of conservation and management strategies, recognizing individual pandas is critical. However, it remains a challenging task because the existing methods, such as traditional tracking method, discrimination method based on footprint identification, and molecular biology method, are invasive, inaccurate, expensive, or challenging to perform. The advances of imaging technologies have led to the wide applications of digital images and videos in panda conservation and management, which makes it possible for individual panda recognition in a noninvasive manner by using image-based panda face recognition method. In recent years, deep learning has achieved great success in the field of computer vision and pattern recognition. For panda face recognition, a fully automatic deep learning algorithm which consists of a sequence of deep neural networks (DNNs) used for panda face detection, segmentation, alignment, and identity prediction is developed in this study. To develop and evaluate the algorithm, the largest panda image dataset containing 6,441 images from 218 different pandas, which is 39.78% of captive pandas in the world, is established. The algorithm achieved 96.27% accuracy in panda recognition and 100% accuracy in detection. This study shows that panda faces can be used for panda recognition. It enables the use of the cameras installed in their habitat for monitoring their population and behavior. This noninvasive approach is much more cost-effective than the approaches used in the previous panda surveys. Published version 2021-05-12T06:29:53Z 2021-05-12T06:29:53Z 2020 Journal Article Chen, P., Swarup, P., Matkowski, W. M., Kong, A. W. K., Han, S., Zhang, Z. & Rong, H. (2020). A study on giant panda recognition based on images of a large proportion of captive pandas. Ecology and Evolution, 10(7), 3561-3573. https://dx.doi.org/10.1002/ece3.6152 2045-7758 0000-0002-1766-7413 https://hdl.handle.net/10356/148620 10.1002/ece3.6152 32274009 2-s2.0-85081245723 7 10 3561 3573 en Ecology and Evolution 10.21979/N9/8CYVGF © 2020 The Author(s). This is an open access article under the terms of the Creative Commons Attribution License, which permits use, distribution and reproduction in any medium, provided the original work is properly cited. application/pdf
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic Engineering::Computer science and engineering
Giant Panda
Individual Identification
spellingShingle Engineering::Computer science and engineering
Giant Panda
Individual Identification
Chen, Peng
Swarup, Pranjal
Matkowski, Wojciech Michal
Kong, Adams Wai Kin
Han, Su
Zhang, Zhihe
Rong, Hou
A study on giant panda recognition based on images of a large proportion of captive pandas
description As a highly endangered species, the giant panda (panda) has attracted significant attention in the past decades. Considerable efforts have been put on panda conservation and reproduction, offering the promising outcome of maintaining the population size of pandas. To evaluate the effectiveness of conservation and management strategies, recognizing individual pandas is critical. However, it remains a challenging task because the existing methods, such as traditional tracking method, discrimination method based on footprint identification, and molecular biology method, are invasive, inaccurate, expensive, or challenging to perform. The advances of imaging technologies have led to the wide applications of digital images and videos in panda conservation and management, which makes it possible for individual panda recognition in a noninvasive manner by using image-based panda face recognition method. In recent years, deep learning has achieved great success in the field of computer vision and pattern recognition. For panda face recognition, a fully automatic deep learning algorithm which consists of a sequence of deep neural networks (DNNs) used for panda face detection, segmentation, alignment, and identity prediction is developed in this study. To develop and evaluate the algorithm, the largest panda image dataset containing 6,441 images from 218 different pandas, which is 39.78% of captive pandas in the world, is established. The algorithm achieved 96.27% accuracy in panda recognition and 100% accuracy in detection. This study shows that panda faces can be used for panda recognition. It enables the use of the cameras installed in their habitat for monitoring their population and behavior. This noninvasive approach is much more cost-effective than the approaches used in the previous panda surveys.
author2 School of Computer Science and Engineering
author_facet School of Computer Science and Engineering
Chen, Peng
Swarup, Pranjal
Matkowski, Wojciech Michal
Kong, Adams Wai Kin
Han, Su
Zhang, Zhihe
Rong, Hou
format Article
author Chen, Peng
Swarup, Pranjal
Matkowski, Wojciech Michal
Kong, Adams Wai Kin
Han, Su
Zhang, Zhihe
Rong, Hou
author_sort Chen, Peng
title A study on giant panda recognition based on images of a large proportion of captive pandas
title_short A study on giant panda recognition based on images of a large proportion of captive pandas
title_full A study on giant panda recognition based on images of a large proportion of captive pandas
title_fullStr A study on giant panda recognition based on images of a large proportion of captive pandas
title_full_unstemmed A study on giant panda recognition based on images of a large proportion of captive pandas
title_sort study on giant panda recognition based on images of a large proportion of captive pandas
publishDate 2021
url https://hdl.handle.net/10356/148620
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