资源论文Quad-networks: unsupervised learning to rank for interest point detection

Quad-networks: unsupervised learning to rank for interest point detection

2019-12-05 | |  112 |   41 |   0

Abstract

Several machine learning tasks require to represent the data using only a sparse set of interest points. An ideal detector is able to fifind the corresponding interest points even if the data undergo a transformation typical for a given domain. Since the task is of high practical interest in computer vision, many hand-crafted solutions were proposed. In this paper, we ask a fundamental question: can we learn such detectors from scratch? Since it is often unclear what points are "interesting", human labelling cannot be used to fifind a truly unbiased solution. Therefore, the task requires an unsupervised formulation. We are the fifirst to propose such a formulation: training a neural network to rank points in a transformation-invariant manner. Interest points are then extracted from the top/bottom quantiles of this ranking. We validate our approach on two tasks: standard RGB image interest point detection and challenging cross-modal interest point detection between RGB and depth images. We quantitatively show that our unsupervised method performs better or on-par with baselines.

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