端到端任务特定对象检测的iou增强关注

Jing Zhao, Shengjian Wu, Li Sun, Qingli Li
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引用次数: 2

摘要

稀疏R-CNN在没有图像中密集平铺的锚框或网格点的情况下,通过一组以级联训练方式更新的对象查询和建议框,取得了令人满意的结果。然而,由于查询本身的稀疏性以及查询与其所属区域之间的一对一关系,严重依赖于自关注,在训练早期通常是不准确的。此外,在对象密集的场景中,对象查询与许多不相关的对象交互,降低了对象查询的唯一性,影响了性能。本文提出在不同盒子之间使用IoU作为自关注中值路由的先验。原始注意矩阵乘以由提案框的IoU计算出的相同大小的矩阵,确定路由方案,从而抑制不相关的特征。此外,为了准确地提取分类和回归的特征,我们添加了两个轻量级的投影头来提供基于对象查询的动态通道掩码,并将它们与动态卷积的输出相乘,使结果适合两种不同的任务。我们在MS-COCO和CrowdHuman等不同的数据集上对该方案进行了验证,结果表明该方案显著提高了性能,提高了模型的收敛速度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
IoU-Enhanced Attention for End-to-End Task Specific Object Detection
Without densely tiled anchor boxes or grid points in the image, sparse R-CNN achieves promising results through a set of object queries and proposal boxes updated in the cascaded training manner. However, due to the sparse nature and the one-to-one relation between the query and its attending region, it heavily depends on the self attention, which is usually inaccurate in the early training stage. Moreover, in a scene of dense objects, the object query interacts with many irrelevant ones, reducing its uniqueness and harming the performance. This paper proposes to use IoU between different boxes as a prior for the value routing in self attention. The original attention matrix multiplies the same size matrix computed from the IoU of proposal boxes, and they determine the routing scheme so that the irrelevant features can be suppressed. Furthermore, to accurately extract features for both classification and regression, we add two lightweight projection heads to provide the dynamic channel masks based on object query, and they multiply with the output from dynamic convs, making the results suitable for the two different tasks. We validate the proposed scheme on different datasets, including MS-COCO and CrowdHuman, showing that it significantly improves the performance and increases the model convergence speed.
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