Face detection based on Yolov5

Jiahang Liu
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Abstract

Face recognition technology is one of the popular research directions in computer vision in recent years, which is widely used in our daily life. Therefore, this paper takes the Yolov5 algorithm as the core, introduces the COCO dataset, and at the same time introduces the Yolov5 system structure and analyzes the algorithm in terms of implementation and performance. Experiments are conducted on the detection of two targets with different genders, and by changing three different hyperparameters (number of training rounds, batch size and image size), we observe the influence of the change of different hyperparameters on the experimental effect and derive the suitable size of different hyperparameters
基于 Yolov 的人脸检测5
人脸识别技术是近年来计算机视觉领域的热门研究方向之一,在日常生活中应用广泛。因此,本文以 Yolov5 算法为核心,介绍了 COCO 数据集,同时介绍了 Yolov5 系统结构,并从实现和性能方面对算法进行了分析。实验以检测两个不同性别的目标为对象,通过改变三个不同的超参数(训练轮数、批量大小和图像大小),观察不同超参数的变化对实验效果的影响,并得出不同超参数的合适大小
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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