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Object detection with class aware region proposal network and focused attention objective

机译:具有类别感知区域提议网络和集中注意力目标的目标检测

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In this paper, we propose a novel deep CNN-based framework to improve object detection performance. First, we introduce the Class Aware Region Proposal Network (CARPN) to produce high quality region proposals by using a new strategy for anchor generation, and by training the network with both bounding boxes and category labels of the objects. Instead of learning a binary objecton-object classifier for generating region proposals, we assign the class label to each anchor, and train the region proposal network with a multi-class loss. Second, we introduce the Focused Attention (FA) objective to encourage the network to learn features mainly from objects of interest while suppressing those features from the background region. As a result, false positive proposals caused by strong background features can be reduced to a large extent. Comprehensive experimental evaluations reveal that the proposed CARPN & FA framework remarkably outperforms the baseline Faster R-CNN method up to 4.1% mAP with a shallower network and 2.8% mAP with a deeper network, and achieves a better mAP than most of the latest state-of-the-art methods. (C) 2018 Elsevier B.V. All rights reserved.
机译:在本文中,我们提出了一种新颖的基于深度CNN的框架来提高目标检测性能。首先,我们引入类感知区域提议网络(CARPN),以通过使用一种新的生成锚点的策略并通过对对象的边界框和类别标签进行训练来生成高质量的区域提议。我们没有学习用于生成区域提议的二进制对象/非对象分类器,而是将类别标签分配给每个锚点,并训练具有多类损失的区域提议网络。其次,我们引入聚焦注意力(FA)目标,以鼓励网络主要从感兴趣的对象学习特征,同时从背景区域抑制那些特征。结果,可以在很大程度上减少由强背景特征引起的误报建议。全面的实验评估表明,拟议的CARPN&FA框架在网络较浅的情况下明显优于基线Faster R-CNN方法,最高可达4.1%mAP,在网络较深的情况下可达2.8%mAP,并且与大多数最新状态相比,其mAP更好最先进的方法。 (C)2018 Elsevier B.V.保留所有权利。

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