UR2KiD: Unifying Retrieval, Keypoint Detection, and Keypoint Description without Local Correspondence Supervision
Tsun-Yi Yang, Duy-Kien Nguyen, Huub Heijnen, Vassileios, Balntas

TL;DR
UR2KiD presents a unified, supervision-free framework for keypoint detection, description, and image retrieval using a ResNet-based architecture, achieving competitive results without relying on pointwise correspondences.
Contribution
The paper introduces a novel method that jointly handles keypoint detection, description, and retrieval without supervision of point correspondences, simplifying and unifying the process.
Findings
Achieves competitive performance on challenging benchmarks.
Does not require pointwise or pixelwise supervision.
Effective under viewpoint, scale, and lighting changes.
Abstract
In this paper, we explore how three related tasks, namely keypoint detection, description, and image retrieval can be jointly tackled using a single unified framework, which is trained without the need of training data with point to point correspondences. By leveraging diverse information from sequential layers of a standard ResNet-based architecture, we are able to extract keypoints and descriptors that encode local information using generic techniques such as local activation norms, channel grouping and dropping, and self-distillation. Subsequently, global information for image retrieval is encoded in an end-to-end pipeline, based on pooling of the aforementioned local responses. In contrast to previous methods in local matching, our method does not depend on pointwise/pixelwise correspondences, and requires no such supervision at all i.e. no depth-maps from an SfM model nor manually…
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Taxonomy
TopicsAdvanced Image and Video Retrieval Techniques · Robotics and Sensor-Based Localization · Advanced Neural Network Applications
