An improved YOLOv5 algorithm for obscured target recognition

Q4 Engineering
Zhizhan Lu, Ruili Wang, Yunfeng Jin, Chao Liang
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引用次数: 0

Abstract

Target detection is an important problem in computer vision and has important research value in the fields of pedestrian tracking, license plate recognition, and unmanned vehicles [1].The Viola-Jones algorithm is used to detect frontal face images, which improves the speed of face detection by tens or hundreds of times while obtaining the same or even better accuracy, but for special and HOG captures local shape information better and has good invariance to both geometric and optical changes, SVM solves machine learning in small sample cases, but its feature descriptor acquisition process is complex and has high dimensionality, leading to poor real-time performance, and the support vector machine algorithm is difficult to implement for large-scale training samples, while the deep learning-based YOLOv5 target detection algorithm combines the advantages of Viola-Jones algorithm and HOG+SVM algorithm to make up for the shortcomings of the above two algorithms, which is not only very stable for occlusion and complex case processing, but also can be implemented for large regular training samples, but the accuracy of YOLOv5 for target detection is not ideal, and this paper adds SENet mechanism in YOLOv5, which can make the network better to learn the locations in the images that need attention. Therefore, this paper first introduces the traditional target detection algorithm, then introduces and analyzes the Yolov5 algorithm, and improves and optimizes it, and compares it with the traditional target detection algorithm, and the results show that the improved Yolov5 algorithm has better results for target detection.
一种改进的YOLOv5模糊目标识别算法
目标检测是计算机视觉中的一个重要问题,在行人跟踪、车牌识别、无人驾驶汽车等领域具有重要的研究价值。采用Viola-Jones算法对正面人脸图像进行检测,在获得相同甚至更好的精度的情况下,将人脸检测速度提高了数十倍甚至数百倍,但对于特殊和HOG, SVM能更好地捕获局部形状信息,对几何和光学变化都具有良好的不变性,SVM解决了小样本情况下的机器学习问题,但其特征描述符获取过程复杂且维数高,实时性较差。而基于深度学习的YOLOv5目标检测算法结合了Viola-Jones算法和HOG+SVM算法的优点,弥补了上述两种算法的不足,不仅对遮挡和复杂案例处理非常稳定,而且对于大型规则训练样本也可以实现,但YOLOv5的目标检测精度不理想;本文在YOLOv5中加入了SENet机制,使网络能够更好地学习到图像中需要注意的位置。因此,本文首先介绍了传统的目标检测算法,然后对Yolov5算法进行了介绍和分析,并对其进行了改进和优化,并与传统的目标检测算法进行了比较,结果表明改进后的Yolov5算法具有更好的目标检测效果。
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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CiteScore
0.10
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0.00%
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8
审稿时长
10 weeks
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