A Coarse-Fine Network for Keypoint Localization

Shaoli Huang, Mingming Gong, D. Tao
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引用次数: 146

Abstract

We propose a coarse-fine network (CFN) that exploits multi-level supervisions for keypoint localization. Recently, convolutional neural networks (CNNs)-based methods have achieved great success due to the powerful hierarchical features in CNNs. These methods typically use confidence maps generated from ground-truth keypoint locations as supervisory signals. However, while some keypoints can be easily located with high accuracy, many of them are hard to localize due to appearance ambiguity. Thus, using strict supervision often fails to detect keypoints that are difficult to locate accurately To target this problem, we develop a keypoint localization network composed of several coarse detector branches, each of which is built on top of a feature layer in a CNN, and a fine detector branch built on top of multiple feature layers. We supervise each branch by a specified label map to explicate a certain supervision strictness level. All the branches are unified principally to produce the final accurate keypoint locations. We demonstrate the efficacy, efficiency, and generality of our method on several benchmarks for multiple tasks including bird part localization and human body pose estimation. Especially, our method achieves 72.2% AP on the 2016 COCO Keypoints Challenge dataset, which is an 18% improvement over the winning entry.
关键点定位的粗-精网络
我们提出了一种利用多级监督进行关键点定位的粗-细网络(CFN)。近年来,基于卷积神经网络(cnn)的方法由于其强大的层次特征而取得了巨大的成功。这些方法通常使用从地面真值关键点位置生成的置信度图作为监督信号。然而,虽然一些关键点可以很容易地定位,精度很高,但许多关键点由于外观歧义而难以定位。因此,使用严格的监督往往无法检测到难以准确定位的关键点。针对这一问题,我们开发了一个关键点定位网络,该网络由几个粗检测器分支组成,每个粗检测器分支都建立在CNN的一个特征层之上,而一个细检测器分支则建立在多个特征层之上。我们通过指定的标签图对每个分支机构进行监管,以阐明一定的监管严格程度。所有分支基本统一,以产生最终准确的关键点位置。我们在包括鸟类部位定位和人体姿势估计在内的多个任务的几个基准上证明了我们的方法的有效性,效率和通用性。特别是,我们的方法在2016年COCO关键点挑战数据集上实现了72.2%的AP,比获胜条目提高了18%。
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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