论文标题

SEKD:自我不断发展的关键点检测和描述

SEKD: Self-Evolving Keypoint Detection and Description

论文作者

Song, Yafei, Cai, Ling, Li, Jia, Tian, Yonghong, Li, Mingyang

论文摘要

研究人员试图利用深层神经网络(DNN)从其在各种视觉任务上取得成功启发的图像中学习新的本地特征。但是,现有的基于DNN的算法尚未取得如此出色的进步,这可能部分归因于局部特征检测器和描述符之间交互性字符的利用不足。为了减轻这些困难,我们强调了两个所需的属性,即可重复性和可靠性,以同时总结本地特征检测器和描述符的固有和交互性特征。在这些属性的指导下,提议从未标记的自然图像中学习一个高级局部特征模型,即自我不断发展的框架(即自我不断发展的关键点检测和描述(SEKD))。此外,为了获得绩效保证,还专门设计了新颖的培训策略,以最大程度地降低学习功能及其特性之间的差距。我们基于同构估计,相对姿势估计和结构 - 动作任务的提议方法。广泛的实验结果表明,所提出的方法通过显着的边缘优于流行的手工制作和基于DNN的方法。消融研究还验证了每个关键训练策略的有效性。我们将公开发布我们的代码以及训练有素的模型。

Researchers have attempted utilizing deep neural network (DNN) to learn novel local features from images inspired by its recent successes on a variety of vision tasks. However, existing DNN-based algorithms have not achieved such remarkable progress that could be partly attributed to insufficient utilization of the interactive characters between local feature detector and descriptor. To alleviate these difficulties, we emphasize two desired properties, i.e., repeatability and reliability, to simultaneously summarize the inherent and interactive characters of local feature detector and descriptor. Guided by these properties, a self-supervised framework, namely self-evolving keypoint detection and description (SEKD), is proposed to learn an advanced local feature model from unlabeled natural images. Additionally, to have performance guarantees, novel training strategies have also been dedicatedly designed to minimize the gap between the learned feature and its properties. We benchmark the proposed method on homography estimation, relative pose estimation, and structure-from-motion tasks. Extensive experimental results demonstrate that the proposed method outperforms popular hand-crafted and DNN-based methods by remarkable margins. Ablation studies also verify the effectiveness of each critical training strategy. We will release our code along with the trained model publicly.

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