基于计算机视觉的道路场景Yolo目标检测算法

Haoming He
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引用次数: 1

摘要

利用人工智能、计算机视觉等技术,汽车可以监控驾驶状况,以确保安全或辅助驾驶。寻找停车位作为驾驶员的首要任务,相当于“眼睛”,需要识别道路前方的车辆和行人。本文的目的是研究基于计算机视觉的道路场景Yolo目标检测算法。本文阐述了道路目标检测的研究基础和重要性,以及传统道路目标检测的现状,并深入研究了道路目标检测优化的进展。对于相关技术的分析,首先介绍了图像的灰度,然后介绍了图像的二值化,最后对YOLOv4进行了详细的分析。介绍了实验中使用的软硬件环境,描述了实验中使用的数据集中的图像采集和标签标注过程,并介绍了常用的评价目标检测算法的评价指标。通过FasterR-CNN、SSD和YOLOv4的对比,YOLOv4的平均准确率(mAP)达到87.2%,满足自动驾驶汽车的要求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Yolo Target Detection Algorithm in Road Scene Based on Computer Vision
Using artificial intelligence, computer vision and other technologies, cars can monitor driving conditions to ensure safety or assist driving. As a driver’s primary task, finding a parking space is equivalent to “eyes”, which need to identify cars and pedestrians in front of the road. The purpose of this paper is to study the Yolo object detection algorithm for road scenes based on computer vision. This paper expounds the research basis and importance of road object detection, as well as the status quo of traditional road object detection, and deeply studies the progress of road object detection optimization. For the analysis of related technologies, firstly, the grayscale of the image is introduced, then the binarization of the image is introduced, and finally the YOLOv4 is analyzed in detail. The software and hardware environment used in the experiment is introduced, the image collection and label labeling process in the data set used in the experiment is described, and the evaluation indicators commonly used to evaluate target detection algorithms are introduced. Through the comparison of FasterR-CNN, SSD and YOLOv4, The average accuracy rate (mAP) of YOLOv4 reaches 87.2%, which meets the requirements of autonomous vehicles.
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