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Refine pedestrian detections by referring to features in different ways

机译:通过以不同方式引用特征来精确分娩

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The performance of object detection has been improved as the success of deep architectures. The main algorithm predominantly used for general detection is Faster R-CNN because of their high accuracy and fast inference time. In pedestrian detection, Region Proposal Network (RPN) itself which is used for region proposals in Faster R-CNN can be used as a pedestrian detector. Also, RPN even shows better performance than Faster R-CNN for pedestrian detection. However, RPN generates severe false positives such as high score backgrounds and double detections because it does not have downstream classifier. From this observations, we made a network to refine results generated from the RPN. Our Refinement Network refers to the feature maps of the RPN and trains the network to rescore severe false positives. Also, we found that different type of feature referencing method is crucial for improving performance. Our network showed better accuracy than RPN with almost same speed on Caltech Pedestrian Detection benchmark.
机译:对象检测的性能已被改进为深度架构的成功。主要用于一般检测的主要算法是更快的R-CNN,因为它们的高精度和快速推断时间。在行人检测中,用于更快R-CNN的区域提案的区域提案网络(RPN)本身可以用作行人检测器。此外,RPN甚至表现出比行人检测的更快的R-CNN更好的性能。但是,RPN会产生严重的误报,例如高分背景和双重检测,因为它没有下游分类器。根据本观察,我们备受了一种提供从RPN产生的结果。我们的细化网络是指RPN的特征映射并列车网络来重振严重的误报。此外,我们发现不同类型的特征参考方法对于提高性能至关重要。我们的网络比RPN在CALTECH行人检测基准上具有几乎相同的RPN的准确性。

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