The use of object detection algorithms is becoming increasingly important in autonomous vehicles, and object detection at high accuracy and a fast inference speed is essential for safe autonomous driving. A false positive (FP) from a false localization during autonomous driving can lead to fatal accidents and hinder safe and efficient driving. Therefore, a detection algorithm that can cope with mislocalizations is required in autonomous driving applications. This paper proposes a method for improving the detection accuracy while supporting a real-time operation by modeling the bounding box (bbox) of YOLOv3, which is the most representative of one-stage detectors, with a Gaussian parameter and redesigning the loss function. In addition, this paper proposes a method for predicting the localization uncertainty that indicates the reliability of bbox. By using the predicted localization uncertainty during the detection process, the proposed schemes can significantly reduce the FP and increase the true positive (TP), thereby improving the accuracy. Compared to a conventional YOLOv3, the proposed algorithm, Gaussian YOLOv3, improves the mean average precision (mAP) by 3.09 and 3.5 on the KITTI and Berkeley deep drive (BDD) datasets, respectively. In addition, on the same datasets, the proposed algorithm can reduce the FP by 41.40% and 40.62%, and increase the TP by 7.26% and 4.3%, respectively. Nevertheless, the proposed algorithm is capable of real-time detection at faster than 42 frames per second (fps).
翻译:自动驾驶中,物体检测算法的使用正在变得越来越重要,物体检测速度高精度和快速推导速度对于安全自主驾驶至关重要。自自主驾驶期间错误定位产生的假正(FP)可能导致致命事故,并妨碍安全和高效驾驶。因此,在自主驾驶应用程序中,需要一种能够应对位置错误的检测算法。本文件建议采用一种方法来提高探测准确性,同时通过模拟YOLOv3的捆绑盒(bbbbox)来支持实时操作,YOLOv3是最能代表单级探测器,带有高斯参数并重新设计损失功能的。此外,本文还提出一种预测本地化不确定性的方法,表明bbox的可靠性。因此,在自动驾驶应用程序中,使用预测的本地化不确定性可以大大减少FP,提高真实性(TP)3,高斯·YOLOv3,提议的算法为7-40框架,提高了一级探测器的平均精确度(MAP),在KITTI和Berkele深度驱动器中,拟议用真实性驱动器(DRset)将数据分别通过 Ral-rbs 增加3.%和BARx数据。