A Pet Detection System Based on YOLOv4

Yu-Wei Yuan
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引用次数: 1

Abstract

With the increasing development of artificial intelligence, it brings an opportunity to use advanced intelligent technology to solve real pet problems. And it has important practical significance to solve a series of issues such as pet photography and public transportation pet detection in a faster and more efficient way. By studying the application of deep convolutional neural networks in pet detection tasks, a complete system for pet detection is designed. The entire system uses the YOLOv4 algorithm as the basic algorithm for object detection. After completing the process of data collection, data expansion and data labeling, completing the algorithm training and optimization process, quantitatively analyzing the final system detection effect and testing the robustness and generalization of the system, a system for cat and dog detection with a mean average precision of 95.71% is finally obtained. Experiments show that the designed detection system can use the deep convolutional neural network to automatically, quickly and accurately detect pets.
基于YOLOv4的宠物检测系统
随着人工智能的日益发展,为利用先进的智能技术解决现实宠物问题带来了契机。对于更快、更高效地解决宠物摄影、公共交通宠物检测等一系列问题具有重要的现实意义。通过研究深度卷积神经网络在宠物检测任务中的应用,设计了一个完整的宠物检测系统。整个系统采用YOLOv4算法作为目标检测的基本算法。在完成数据收集、数据扩展和数据标注过程,完成算法训练和优化过程,定量分析最终的系统检测效果,并对系统的鲁棒性和泛化性进行测试后,最终得到一个平均精度为95.71%的猫狗检测系统。实验表明,所设计的检测系统可以利用深度卷积神经网络对宠物进行自动、快速、准确的检测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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