用于车辆监视的焦损密集检测器

Xiaoliang Wang, Peng Cheng, Xinchuan Liu, Benedict Uzochukwu
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引用次数: 19

摘要

深度学习在不同的计算机视觉应用中被广泛认为是一种很有前途的方法。其中,单阶段目标检测器和两阶段目标检测器是卷积神经网络中最重要的两类目标检测方法。一级目标检测器在速度上通常优于二级目标检测器;然而,与两级目标探测器相比,它通常在探测精度上落后。在本研究中,基于聚焦损失的retanet作为一级目标检测器,能够很好地匹配常规一级检测器的速度,并且在精度上优于二级检测器,用于车辆检测。最先进的性能结果已在DETRAC车辆数据集上显示。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Focal loss dense detector for vehicle surveillance
Deep learning has been widely recognized as a promising approach in different computer vision applications. Specifically, one-stage object detector and two-stage object detector are regarded as the most important two groups of Convolutional Neural Network based object detection methods. One-stage object detector could usually outperform two-stage object detector in speed; However, it normally trails in detection accuracy, compared with two-stage object detectors. In this study, focal loss based RetinaNet, which works as one-stage object detector, is utilized to be able to well match the speed of regular one-stage detectors and also defeat two-stage detectors in accuracy, for vehicle detection. State-of-the-art performance result has been showed on the DETRAC vehicle dataset.
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