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Wildlife Detection and Recognition in Digital Images Using YOLOv3: Extended Abstract

机译:使用YOLOV3的野生动物检测与识别数字图像:扩展摘要

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摘要

Recent advances in hardware capability and machine learning techniques enable convenient monitoring of wildlife and their living environments. In this work, we apply Deep Learning (DL) methods to detect and recognize wildlife in digital images and report the experimental results conducted in a commodity workstation. Specifically, YOLOv3 and YOLOv3-Tiny are used to detect and classify several classes of animals based on 9051 digital images and they achieve 75.2% and 68.4% mean average precision, respectively.
机译:硬件能力和机器学习技术的最新进展使得对野生动物及其生活环境的方便监控。在这项工作中,我们应用深度学习(DL)方法来检测和识别数字图像中的野生动物,并报告在商品工作站中进行的实验结果。具体而言,YOLOV3和YOLOV3-TINY用于根据9051数字图像检测和分类几种动物,分别达到75.2%和68.4%的平均精度。

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