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Detecting Small Objects Using a Channel-Aware Deconvolutional Network

机译:使用通道感知的解卷路网络检测小对象

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摘要

Detecting small objects is a challenging task due to their low resolution and noisy representation even using deep learning methods. In this paper, we propose a novel object detection method based on the channel-aware deconvolutional network (CADNet) for accurate small object detection. Specifically, we develop the channel-aware deconvolution (ChaDeConv) layer to exploit the correlations of feature maps in different channels across deeper layers, improving the recall rate of small objects at low additional computational costs. Following the ChaDeConv layer, the multiple region proposal sub-network (Multi-RPN) is employed to supervise and optimize multiple detection layers simultaneously to achieve better accuracy. The Multi-RPN module is only used in the training phase and does not increase the computation cost of the inference. In addition, we design a new anchor matching strategy based on the center point translation (CPTMatching) of anchors to select more extending anchors as positive samples in the training phase. The extensive experiments on the PASCAL VOC 2007/2012, MS COCO, and UAVDT datasets show that the proposed CADNet achieves state-of-the-art performance compared to the existing methods.
机译:由于它们的低分辨率和嘈杂的表示,即使使用深度学习方法,检测小对象是一个具有挑战性的任务。在本文中,我们提出了一种基于信道感知的解压缩网络(CADNet)的新型对象检测方法,用于精确小对象检测。具体地,我们开发了频道感知的解卷积(ChadeConv)层,以利用不同信道中的特征映射的相关性,跨越更深层,以低额外的计算成本提高小对象的召回速率。在ChadeConv层之后,采用多区域提议子网(多RPN)来同时监督和优化多个检测层以实现更好的准确性。多RPN模块仅用于训练阶段,并且不会增加推断的计算成本。此外,我们设计了基于锚点的中心点转换(CPTMatching)的新锚匹配策略,以选择更延伸的锚点作为训练阶段的正样品。 Pascal VOC 2007/2012,COCO和UAVDT数据集的广泛实验表明,与现有方法相比,建议的CADNET实现了最先进的性能。

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