Binta Islam Sazida, Valles Damian, Hibbitts Toby J, Ryberg Wade A, Walkup Danielle K, Forstner Michael R J
Ingram School of Engineering, Texas State University, San Marcos, TX 78666, USA.
Natural Resources Institute, Texas A&M University, College Station, TX 77843, USA.
Animals (Basel). 2023 May 2;13(9):1526. doi: 10.3390/ani13091526.
Accurate identification of animal species is necessary to understand biodiversity richness, monitor endangered species, and study the impact of climate change on species distribution within a specific region. Camera traps represent a passive monitoring technique that generates millions of ecological images. The vast numbers of images drive automated ecological analysis as essential, given that manual assessment of large datasets is laborious, time-consuming, and expensive. Deep learning networks have been advanced in the last few years to solve object and species identification tasks in the computer vision domain, providing state-of-the-art results. In our work, we trained and tested machine learning models to classify three animal groups (snakes, lizards, and toads) from camera trap images. We experimented with two pretrained models, VGG16 and ResNet50, and a self-trained convolutional neural network (CNN-1) with varying CNN layers and augmentation parameters. For multiclassification, CNN-1 achieved 72% accuracy, whereas VGG16 reached 87%, and ResNet50 attained 86% accuracy. These results demonstrate that the transfer learning approach outperforms the self-trained model performance. The models showed promising results in identifying species, especially those with challenging body sizes and vegetation.
准确识别动物物种对于了解生物多样性丰富程度、监测濒危物种以及研究气候变化对特定区域内物种分布的影响至关重要。相机陷阱是一种被动监测技术,可生成数百万张生态图像。鉴于手动评估大型数据集既费力、耗时又昂贵,大量的图像使得自动化生态分析成为必要。在过去几年中,深度学习网络不断发展,以解决计算机视觉领域中的目标和物种识别任务,并提供了最先进的结果。在我们的工作中,我们训练并测试了机器学习模型,以便从相机陷阱图像中对三类动物(蛇、蜥蜴和蟾蜍)进行分类。我们试验了两个预训练模型VGG16和ResNet50,以及一个具有不同卷积神经网络层和增强参数的自训练卷积神经网络(CNN - 1)。对于多分类,CNN - 1的准确率达到72%,而VGG16达到87%,ResNet50的准确率为86%。这些结果表明,迁移学习方法优于自训练模型的性能。这些模型在识别物种方面显示出了有前景的结果,尤其是对于那些体型具有挑战性和处于植被中的物种。