FlexiNet:自动驾驶汽车快速准确的车辆检测

Sabeeha Mehtab, Farah Sarwar, Weiqi Yan
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引用次数: 3

摘要

自动驾驶汽车已经开始在道路上行驶;然而,准确的实时道路感知是其成功的关键因素之一。在这个方向上最大的挑战包括遮挡、截断、照明条件和复杂的背景。为了提高车辆检测的精度和检测速度,提出了一种动态缩放网络,帮助构建平衡形状的神经网络,以最小的硬件实现最优的精度。网络架构受YOLOv5的影响,以跨阶段局部网络(Cross-Stage Partial Network, CSPNet)为骨干组成。为了更进一步,我们提出了一种自动锚生成方法,使网络适用于任何数据集。我们的神经网络通过激活函数、损失函数和优化函数进行微调,从而得到最优结果。实验结果表明,以KITTI数据集为基准,本文提出的网络具有与YOLOv4和Faster R-CNN相当的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
FlexiNet: Fast and Accurate Vehicle Detection for Autonomous Vehicles
Autonomous vehicle has come to reach on the road; however accurate road perception in real-time is one of the crucial factors towards its success. The greatest challenge in this direction includes occlusion, truncation, lighting conditions, and complex backgrounds. In order to improve the accuracy and detection speed of vehicle detection, a dynamic scaling network is proposed that assists in constructing a balanced shape neural network to achieve optimum accuracy with minimal hardware. The net architecture is influenced by YOLOv5 and is composed of Cross-Stage Partial Network (CSPNet) as its backbone. In order to go even further, we have proposed an auto-anchor generating method that makes the network suitable for any datasets. Our neural network is fine-tuned by using activation, loss, and optimization functions so as to get the optimum results. Our experimental results demonstrate that the proposed net provides comparable performance of YOLOv4 and Faster R-CNN based on KITTI dataset as the benchmark.
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