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基于改进 YOLOv4 算法的交通信号灯检测与识别方法。

Traffic Lights Detection and Recognition Method Based on the Improved YOLOv4 Algorithm.

机构信息

School of Measurement-Control and Communication Engineering, Harbin University of Science and Technology, Harbin 150080, China.

School of Radio Physics and Electronics, Belarusian State University, 220030 Minsk, Belarus.

出版信息

Sensors (Basel). 2021 Dec 28;22(1):200. doi: 10.3390/s22010200.

Abstract

For facing of the problems caused by the YOLOv4 algorithm's insensitivity to small objects and low detection precision in traffic light detection and recognition, the Improved YOLOv4 algorithm is investigated in the paper using the shallow feature enhancement mechanism and the bounding box uncertainty prediction mechanism. The shallow feature enhancement mechanism is used to extract features from the network and improve the network's ability to locate small objects and color resolution by merging two shallow features at different stages with the high-level semantic features obtained after two rounds of upsampling. Uncertainty is introduced in the bounding box prediction mechanism to improve the reliability of the prediction of the bounding box by modeling the output coordinates of the prediction bounding box and adding the Gaussian model to calculate the uncertainty of the coordinate information. The LISA traffic light data set is used to perform detection and recognition experiments separately. The Improved YOLOv4 algorithm is shown to have a high effectiveness in enhancing the detection and recognition precision of traffic lights. In the detection experiment, the area under the PR curve value of the Improved YOLOv4 algorithm is found to be 97.58%, which represents an increase of 7.09% in comparison to the 90.49% score gained in the Vision for Intelligent Vehicles and Applications Challenge Competition. In the recognition experiment, the mean average precision of the Improved YOLOv4 algorithm is 82.15%, which is 2.86% higher than that of the original YOLOv4 algorithm. The Improved YOLOv4 algorithm shows remarkable advantages as a robust and practical method for use in the real-time detection and recognition of traffic signal lights.

摘要

针对 YOLOv4 算法在交通信号灯检测和识别中对小目标不敏感、检测精度低的问题,本文采用浅层特征增强机制和边界框不确定性预测机制对改进的 YOLOv4 算法进行了研究。浅层特征增强机制用于从网络中提取特征,通过将两个不同阶段的两个浅层特征与经过两轮上采样得到的高层语义特征融合,提高网络定位小目标和颜色分辨率的能力。在边界框预测机制中引入不确定性,通过对预测边界框的输出坐标进行建模,并添加高斯模型来计算坐标信息的不确定性,从而提高边界框预测的可靠性。使用 LISA 交通灯数据集分别进行检测和识别实验。实验结果表明,改进的 YOLOv4 算法在提高交通灯的检测和识别精度方面具有很高的有效性。在检测实验中,改进的 YOLOv4 算法的 PR 曲线下面积值为 97.58%,比在 Vision for Intelligent Vehicles and Applications Challenge Competition 中获得的 90.49%的分数提高了 7.09%。在识别实验中,改进的 YOLOv4 算法的平均准确率为 82.15%,比原始的 YOLOv4 算法提高了 2.86%。改进的 YOLOv4 算法作为一种实时检测和识别交通信号灯的鲁棒实用方法,具有显著的优势。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/42d2/8749665/f7ab3226f030/sensors-22-00200-g001.jpg

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