Object Detection and Image Segmentation for Autonomous Vehicles

Lian-ri Cong, Chengbin Huang, Chaochen Zhang, Jia Li, B. Liu, P. Yang
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Abstract

With the rapid development of edge computing and the demand for green, safe and efficient transportation system, edge intelligence has been widely used in various traffic scenarios. By collecting images and videos, vehicles can obtain basic data and traffic flow information, which can be used to predict future movement trends. In addition, different traffic participants and their surroundings can be distinguished by image segmentation technology. In this paper, considering the resource limitation and latency constraint on edge vehicles, we proposed an improved vehicle detection algorithm based on tailored YOLOv4(You Only Look Once). To further increase the detection accuracy and speed, we introduce the Efficient Channel Attention (ECA) mechanism and High-Resolution Network (HRNet) into improved YOLOv4. After that, based on collected and detected objects, we proposed an image segmentation algorithm based on the DeepLabv3+ network, in which the MobileNetv2 is taken as the backbone network and the Softpool pooling algorithm is adopted as the pooling method. Experimental results show that compared with other classic methods, our proposed model has a higher mean Average Precision (mAP) for object detection and can improve the accuracy of original YOLOv4 from 83.34% to 87.64%. For image segmentation, our model also outperform other models with the Mean Intersection over Union (mIOU) improved from 72.18% to 74.99%.
自动驾驶汽车目标检测与图像分割
随着边缘计算的快速发展和人们对绿色、安全、高效的交通系统的需求,边缘智能在各种交通场景中得到了广泛的应用。车辆通过采集图像和视频,可以获得基础数据和交通流量信息,用于预测未来的运动趋势。此外,利用图像分割技术可以区分不同的交通参与者及其周围环境。本文考虑到边缘车辆的资源限制和时延约束,提出了一种基于定制化YOLOv4(You Only Look Once)的改进车辆检测算法。为了进一步提高检测精度和速度,我们在改进的YOLOv4中引入了高效通道注意(ECA)机制和高分辨率网络(HRNet)。之后,基于采集和检测的目标,我们提出了一种基于DeepLabv3+网络的图像分割算法,该算法以MobileNetv2为骨干网络,采用Softpool池化算法作为池化方法。实验结果表明,与其他经典方法相比,我们提出的模型具有更高的目标检测平均精度(mAP),可以将原始YOLOv4的精度从83.34%提高到87.64%。在图像分割方面,我们的模型也优于其他模型,mIOU均值从72.18%提高到74.99%。
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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