An Automated Animal Classification System: A Transfer Learning Approach

Rochan Sharma, Nitin Pasi, S. Shanu
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引用次数: 2

Abstract

Animal classification from images obtained by various techniques in forest become an important task to carry out focused distribution and abundance estimation. In the following paper a frame work based on Transfer Learning (TL) in a Convolutional Neural Network is proposed for the construction of an automated animal identification system. The framework is used to analyze & identify focal species in the images. A dataset of 6,203 camera trap images of 11 species including Wild pig, Barking deer, Chital, Elephant, Gaur, Hare, Jackal, Jungle cat, Porcupine, Sambhar, Sloth bear was obtained. Superior performance can be achieved by using Transfer learning in Deep Convolutions Neural Network (DCNN) for species classification. The accuracy achieved by the proposed model on the test dataset is 96% in 18 epochs by using batch-size of 32. This, in turn, can speed up research findings, construct more efficient and reliable animal monitoring systems, and consequently, save the time and effort of the Indian scientists. Therefore, having the potential to make significant impacts in the classification and analysis of camera trap images of the site under observation.
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动物自动分类系统:一种迁移学习方法
利用各种技术获取的森林动物图像进行动物分类,成为进行集中分布和丰度估算的重要任务。本文提出了一种基于卷积神经网络迁移学习(TL)的框架,用于构建动物自动识别系统。该框架用于分析和识别图像中的焦点物种。采集了野猪、狗尾鹿、赤鹿、大象、野牛、野兔、豺、丛林猫、豪猪、桑哈尔、树懒熊等11种动物的6203张相机图像。将迁移学习应用于深度卷积神经网络(Deep Convolutions Neural Network, DCNN)的物种分类中,可以获得更好的分类性能。在测试数据集上,使用32个批大小,在18个epoch中,该模型的准确率达到96%。反过来,这可以加快研究成果,建立更有效和可靠的动物监测系统,从而节省印度科学家的时间和精力。因此,有可能对被观察地点的相机陷阱图像的分类和分析产生重大影响。
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