基于CARLA模拟器的SSD和Faster RCNN多类目标检测模型的性能分析

D.R. Niranjan, B. Vinaykarthik, Mohana
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引用次数: 4

摘要

多年来,自动驾驶汽车的研究呈指数级增长,研究人员致力于不同的目标检测算法,以实现安全、胜任的自动驾驶系统,而法律当局也在寻找减轻全自动驾驶汽车带来的风险的方法。这些进步可以带来更安全的通勤环境,减少事故,也消除了人类驾驶的必要性。该领域的最新发展表明,与LiDAR或RADAR等其他方法相比,结合车载摄像头模块的目标检测模型具有更高的鲁棒性和准确性。本文通过不同的性能参数,提出了两种用于自动驾驶应用的目标检测算法SSD和Faster RCNN。利用CARLA模拟器生成合成数据,对模型进行训练和测试。结果表明,fast - rcnn的平均mAP值为94.32%,而SSD的平均mAP值为88.998%。然而,SSD的速度为30毫秒/张,而Faster-RCNN的速度为106毫秒/张。考虑到自动驾驶的实时性和速度限制,我们可以推断SSD算法更适合这个问题,因为与计算速度的差异相比,模型之间的精度差异相对较小。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Performance Analysis of SSD and Faster RCNN Multi-class Object Detection Model for Autonomous Driving Vehicle Research Using CARLA Simulator
Autonomous vehicle research has grown exponentially over the years with researchers working on different object detection algorithms to realize safe and competent self-driving systems while legal authorities are simultaneously looking into the ways of mitigating the risks posed by fully autonomous vehicles. These advancements can result in a much safer commuting environment, reduced accidents and also eliminate the necessity for human driving. Recent developments in the field show that object detection models combined with an on-vehicle camera module provides more robustness and accuracy than other methods such as LiDAR or RADAR. This paper proposes two object detection algorithms, SSD and Faster RCNN for autonomous driving applications through various performance parameters. CARLA Simulator was used to generate synthetic data to train and test the models. Results shows that that Faster-RCNN was found to have a mean Average Precision (mAP) value of 94.32% while SSD has a mAP of 88.998%. However, SSD had a speed of 30 ms/image while Faster-RCNN had a speed of 106 ms/image. Taking into consideration the real-time and speed constraints in autonomous driving, it was inferred that the SSD algorithm is much better suited for this problem as the difference in accuracy between the models was relatively lesser compared to the difference in computation speeds.
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