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S-TREK: Sequential Translation and Rotation Equivariant Keypoints for local feature extraction

Emanuele Santellani, Christian Sormann, Mattia Rossi, Andreas Kühn, Friedrich Fraundorfer

202314 citationsDOI

Abstract

In this work we introduce S-TREK, a novel local feature extractor that combines a deep keypoint detector, which is both translation and rotation equivariant by design, with a lightweight deep descriptor extractor. We train the S-TREK keypoint detector within a framework inspired by reinforcement learning, where we leverage a sequential procedure to maximize a reward directly related to keypoint repeatability. Our descriptor network is trained following a "detect, then describe" approach, where the descriptor loss is evaluated only at those locations where keypoints have been selected by the already trained detector. Extensive experiments on multiple benchmarks confirm the effectiveness of our proposed method, with S-TREK often outperforming other state-of-the-art methods in terms of repeatability and quality of the recovered poses, especially when dealing with in-plane rotations.

Topics & Concepts

ExtractorArtificial intelligenceComputer scienceDetectorTranslation (biology)Feature extractionLeverage (statistics)Robustness (evolution)Pattern recognition (psychology)Rotation (mathematics)Computer visionEquivariant mapMathematicsEngineeringMessenger RNAGeneChemistryPure mathematicsBiochemistryProcess engineeringTelecommunicationsAdvanced Image and Video Retrieval TechniquesRobotics and Sensor-Based LocalizationVideo Analysis and Summarization
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