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Improving Object Detection with Consistent Negative Sample Mining

机译:通过一致的负样本挖掘​​改进对象检测

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摘要

In object, detection, training samples are divided into negatives and positives simply according to their initial positions on images. Samples which have low overlap with ground-truths are assigned to negatives, and positives otherwise. Once allocated, the negative and positive set are fixed in training. A usually overlooked issue is that certain negatives do not stick to their original states as training proceeds. They gradually regress towards foreground objects rather than away from them, which contradicts the nature of negatives. Training with such inconsistent negatives may confuse detectors in distinguishing between foreground and background, and thus makes training less effective. In this paper, we propose a consistent negative sample mining method to filter out biased negatives in training. Specifically, the neural network takes the regression performance into account, and dynamically activates consistent negatives which have both low input IoUs and low output IoUs for training. In the experiments, we evaluate our method on PASCAL VOC and KITTI datasets, and the improvements on both datasets demonstrate the effectiveness of our method.
机译:在对象检测中,仅根据训练样本在图像上的初始位置将其分为阴性和阳性。与真假重叠率低的样本被分配为负数,否则为正数。分配后,负数和正数集将在训练中固定。一个通常被忽略的问题是,随着训练的进行,某些负面因素不会保持其原始状态。它们逐渐退回到前景物体,而不是远离它们,这与底片的性质相矛盾。使用这种不一致的负片进行训练可能会使检测器无法区分前景和背景,从而使训练效果不佳。在本文中,我们提出了一种一致的负样本挖掘​​方法,以滤除训练中的偏负。具体而言,神经网络将回归性能考虑在内,并动态激活一致的负片,这些负片同时具有低输入IoU和低输出IoU来进行训练。在实验中,我们在PASCAL VOC和KITTI数据集上评估了我们的方法,并且对这两个数据集的改进都证明了我们方法的有效性。

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