Saddle: Fast and repeatable features with good coverage

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摘要

A novel similarity-covariant feature detector that extracts points whose neighborhoods, when treated as a 3D intensity surface, have a saddle-like intensity profile is presented. The saddle condition is verified efficiently by intensity comparisons on two concentric rings that must have exactly two dark-to-bright and two bright-to-dark transitions satisfying certain geometric constraints. Saddle is a fast approximation of Hessian detector as ORB, that implements the FAST detector, is for Harris detector. We propose to use the matching strategy called the first geometric inconsistent with binary descriptors that is suitable for our feature detector, including experiments with fix point descriptors hand-crafted and learned.Experiments show that the Saddle features are general, evenly spread and appearing in high density in a range of images. The Saddle detector is among the fastest proposed. In comparison with detector with similar speed, the Saddle features show superior matching performance on number of challenging datasets. Compared to recently proposed deep-learning based interest point detectors and popular hand-crafted keypoint detectors, evaluated for repeatability in the ApolloScape dataset Huang et al. (2018), the Saddle detectors shows the best performance in most of the street-level view sequences a.k.a. traversals.

论文关键词:Interest points,Fast detectors,Image matching

论文评审过程:Received 6 November 2018, Revised 13 August 2019, Accepted 20 August 2019, Available online 3 September 2019, Version of Record 21 May 2020.

论文官网地址:https://doi.org/10.1016/j.imavis.2019.08.011