Performance Comparison of Yolo-Lite and YoloV3 Using Raspberry Pi and MotionEyeOS

Pertiwang Sismananda, M. Abdurohman, Aji Gautama Putrada
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引用次数: 8

Abstract

This paper proposes system comparison on identifying and processing of human image based on YOLOLITE and YOLOV3 algorithms. Computer Vision (CV) is a field of computer science where the focus is on learning how computers can be trained to identify and process image data as humans do. There are many open source CV frameworks have been proposed such as OpenCV. This paper shows a comparison between YOLO-LITE and YOLOV3 algorithms and analyzes their performance. We have implemented both algorithms in several test cases in the real time domain and carried out in the same test environment. The result shows that the Raspberry Pi camera worked at 15 fps on YOLO-LITE and 1 fps on YOLOV3. This indicates that YOLO-LITE has an average performance of 1 second faster while YOLOV3 has an average accuracy of 30% better.
Yolo-Lite和YoloV3在树莓派和MotionEyeOS下的性能比较
本文对基于YOLOLITE和YOLOV3算法的人体图像识别与处理进行了系统比较。计算机视觉(CV)是计算机科学的一个领域,其重点是学习如何训练计算机像人类一样识别和处理图像数据。目前已经提出了许多开源的CV框架,如OpenCV。本文对YOLO-LITE和YOLOV3算法进行了比较,并对其性能进行了分析。我们在实时域的几个测试用例中实现了这两种算法,并在相同的测试环境中进行了测试。结果表明,树莓派相机在YOLO-LITE上工作速度为15 fps,在YOLOV3上工作速度为1 fps。这表明YOLO-LITE的平均性能快了1秒,而YOLOV3的平均精度提高了30%。
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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