Non-Maximum Suppression (NMS) is essential for object detection and affects the evaluation results by incorporating False Positives (FP) and False Negatives (FN), especially in crowd occlusion scenes. In this paper, we raise the problem of weak connection between the training targets and the evaluation metrics caused by NMS and propose a novel NMS-Loss making the NMS procedure can be trained end-to-end without any additional network parameters. Our NMS-Loss punishes two cases when FP is not suppressed and FN is wrongly eliminated by NMS. Specifically, we propose a pull loss to pull predictions with the same target close to each other, and a push loss to push predictions with different targets away from each other. Experimental results show that with the help of NMS-Loss, our detector, namely NMS-Ped, achieves impressive results with Miss Rate of 5.92% on Caltech dataset and 10.08% on CityPersons dataset, which are both better than state-of-the-art competitors.
翻译:在本文中,我们提出了培训目标与国家监测系统导致的评价指标之间联系薄弱的问题,并提出了一个新的NMS-Los,使国家监测系统程序无需任何额外的网络参数即可经过培训的端对端。我们的NMS-Los惩罚了两种情况,即FP没有受到压制,而FN被国家监测系统错误地消除。具体地说,我们提议了拉动损失,以拉动预测,将同一目标拉近对方,推动损失,将不同目标的预测推离对方。实验结果表明,在NMS-Los的帮助下,我们的探测器,即NMS-Ped,在Caltech数据集的5.92%的误差率和CityPersons数据集的10.08%的误差率下,我们的探测器,即NMS-Ped,取得了令人印象深刻的结果,而Caltech数据集的误差率为5.92%,而CityPersons数据集的误差率为10.8%,两者都优于最先进的竞争者。