Wang Kai, Hou Pengfei, Xu Xuelin, Gao Yun, Chen Ming, Lai Binghua, An Fuyu, Ren Zhenyu, Li Yongzheng, Jia Guifeng, Hua Yan
Guangdong Provincial Key Laboratory of Silviculture, Protection and Utilization, Guangdong Academy of Forestry, Guangzhou 510520, China.
College of Engineering, Huazhong Agricultural University, Wuhan 430070, China.
Animals (Basel). 2024 Mar 28;14(7):1032. doi: 10.3390/ani14071032.
With declining populations in the wild, captive rescue and breeding have become one of the most important ways to protect pangolins from extinction. At present, the success rate of artificial breeding is low, due to the insufficient understanding of the breeding behavior characteristics of pangolins. The automatic recognition method based on machine vision not only monitors for 24 h but also reduces the stress response of pangolins. This paper aimed to establish a temporal relation and attention mechanism network (Pangolin breeding attention and transfer network, PBATn) to monitor and recognize pangolin behaviors, including breeding and daily behavior. There were 11,476 videos including breeding behavior and daily behavior that were divided into training, validation, and test sets. For the training set and validation set, the PBATn network model had an accuracy of 98.95% and 96.11%, and a loss function value of 0.1531 and 0.1852. The model is suitable for a 2.40 m × 2.20 m (length × width) pangolin cage area, with a nest box measuring 40 cm × 30 cm × 30 cm (length × width × height) positioned either on the left or right side inside the cage. A spherical night-vision monitoring camera was installed on the cage wall at a height of 2.50 m above the ground. For the test set, the mean Average Precision (mAP), average accuracy, average recall, average specificity, and average F1 score were found to be higher than SlowFast, X3D, TANet, TSN, etc., with values of 97.50%, 99.17%, 97.55%, 99.53%, and 97.48%, respectively. The recognition accuracies of PBATn were 94.00% and 98.50% for the chasing and mounting breeding behaviors, respectively. The results showed that PBATn outperformed the baseline methods in all aspects. This study shows that the deep learning system can accurately observe pangolin breeding behavior and it will be useful for analyzing the behavior of these animals.
随着野生穿山甲数量的减少,圈养救援和繁殖已成为保护穿山甲免于灭绝的最重要方式之一。目前,由于对穿山甲繁殖行为特征的了解不足,人工繁殖的成功率较低。基于机器视觉的自动识别方法不仅可以24小时监控,还能降低穿山甲的应激反应。本文旨在建立一个时间关系和注意力机制网络(穿山甲繁殖注意力与转移网络,PBATn),以监测和识别穿山甲的行为,包括繁殖行为和日常行为。共有11476个包含繁殖行为和日常行为的视频被分为训练集、验证集和测试集。对于训练集和验证集,PBATn网络模型的准确率分别为98.95%和96.11%,损失函数值分别为0.1531和0.1852。该模型适用于面积为2.40米×2.20米(长×宽)的穿山甲笼舍区域,笼舍内左侧或右侧放置一个尺寸为40厘米×30厘米×30厘米(长×宽×高)的巢箱。在距离地面2.50米高的笼壁上安装了一个球形夜视监控摄像头。对于测试集,发现平均平均精度(mAP)、平均准确率、平均召回率、平均特异性和平均F1分数均高于SlowFast、X3D、TANet、TSN等,分别为97.50%、99.17%、97.55%、99.