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Hot Anchors: A Heuristic Anchors Sampling Method in RCNN-Based Object Detection

机译:热锚:基于RCNN的目标检测中的启发式锚采样方法

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摘要

In the image object detection task, a huge number of candidate boxes are generated to match with a relatively very small amount of ground-truth boxes, and through this method the learning samples can be created. But in fact the vast majority of the candidate boxes do not contain valid object instances and should be recognized and rejected during the training and evaluation of the network. This leads to extra high computation burden and a serious imbalance problem between object and none-object samples, thereby impeding the algorithm’s performance. Here we propose a new heuristic sampling method to generate candidate boxes for two-stage detection algorithms. It is generally applicable to the current two-stage detection algorithms to improve their detection performance. Experiments on COCO dataset showed that, relative to the baseline model, this new method could significantly increase the detection accuracy and efficiency.
机译:在图像对象检测任务中,生成了大量候选框以与相对少量的地面真实框相匹配,并且通过这种方法可以创建学习样本。但是实际上,绝大多数候选框都不包含有效的对象实例,并且应该在网络的训练和评估期间被识别和拒绝。这会导致额外的计算负担,并导致对象和非对象样本之间出现严重的不平衡问题,从而影响了算法的性能。在这里,我们提出了一种新的启发式采样方法来生成用于两阶段检测算法的候选框。通常适用于当前的两阶段检测算法,以提高其检测性能。在COCO数据集上的实验表明,相对于基线模型,该新方法可以显着提高检测精度和效率。

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