CrossDet: Crossline Representation for Object Detection

Heqian Qiu, Hongliang Li, Qingbo Wu, Jianhua Cui, Zichen Song, Lanxiao Wang, Minjian Zhang
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引用次数: 9

Abstract

Object detection aims to accurately locate and classify objects in an image, which requires precise object representations. Existing methods usually use rectangular anchor boxes or a set of points to represent objects. However, these methods either introduce background noise or miss the continuous appearance information inside the object, and thus cause incorrect detection results. In this paper, we propose a novel anchor-free object detection network, called Cross-Det, which uses a set of growing cross lines along horizontal and vertical axes as object representations. An object can be flexibly represented as cross lines in different combinations. It not only can effectively reduce the interference of noise, but also take into account the continuous object information, which is useful to enhance the discriminability of object features and find the object boundaries. Based on the learned cross lines, we propose a crossline extraction module to adaptively capture features of cross lines. Furthermore, we design a decoupled regression mechanism to regress the localization along the horizontal and vertical directions respectively, which helps to decrease the optimization difficulty because the optimization space is limited to a specific direction. Our method achieves consistently improvement on the PASCAL VOC and MS-COCO datasets. The experiment results demonstrate the effectiveness of our proposed method. Code can be available at: https://github.com/QiuHeqian/CrossDet.
CrossDet:用于对象检测的交叉线表示
目标检测的目的是准确定位和分类图像中的目标,这需要精确的目标表示。现有的方法通常使用矩形锚框或一组点来表示对象。然而,这些方法要么引入了背景噪声,要么忽略了物体内部的连续外观信息,从而导致不正确的检测结果。在本文中,我们提出了一种新的无锚点目标检测网络,称为cross - det,它使用一组沿水平和垂直轴生长的交叉线作为目标表示。一个对象可以灵活地表现为不同组合的交叉线。它不仅可以有效地降低噪声的干扰,而且考虑了连续的目标信息,有助于增强目标特征的可分辨性和寻找目标边界。基于学习到的交叉线,我们提出了一个交叉线提取模块来自适应捕获交叉线的特征。此外,我们设计了一种解耦回归机制,分别沿水平和垂直方向对定位进行回归,这有助于降低优化难度,因为优化空间被限制在一个特定的方向上。我们的方法在PASCAL VOC和MS-COCO数据集上实现了持续的改进。实验结果证明了该方法的有效性。代码可以在https://github.com/QiuHeqian/CrossDet上获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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