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Main Authors: Yi, Yang, Chen, Xieyuanli, Zhang, Jinpu, Shen, Hui, Hu, Dewen
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2604.05359
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author Yi, Yang
Chen, Xieyuanli
Zhang, Jinpu
Shen, Hui
Hu, Dewen
author_facet Yi, Yang
Chen, Xieyuanli
Zhang, Jinpu
Shen, Hui
Hu, Dewen
contents Robust local feature detection and description are foundational tasks in computer vision. Existing methods primarily rely on single appearance cues for modeling, leading to unstable keypoints and insufficient descriptor discriminability. In this paper, we propose a multi-cue guided local feature learning framework that leverages semantic and geometric cues to synergistically enhance detection robustness and descriptor discriminability. Specifically, we construct a joint semantic-normal prediction head and a depth stability prediction head atop a lightweight backbone. The former leverages a shared 3D vector field to deeply couple semantic and normal cues, thereby resolving optimization interference from heterogeneous inconsistencies. The latter quantifies the reliability of local regions from a geometric consistency perspective, providing deterministic guidance for robust keypoint selection. Based on these predictions, we introduce the Semantic-Depth Aware Keypoint (SDAK) mechanism for feature detection. By coupling semantic reliability with depth stability, SDAK reweights keypoint responses to suppress spurious features in unreliable regions. For descriptor construction, we design a Unified Triple-Cue Fusion (UTCF) module, which employs a semantic-scheduled gating mechanism to adaptively inject multi-attribute features, improving descriptor discriminability. Extensive experiments on four benchmarks validate the effectiveness of the proposed framework. The source code and pre-trained model will be available at: https://github.com/yiyscut/GESS.git.
format Preprint
id arxiv_https___arxiv_org_abs_2604_05359
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle GESS: Multi-cue Guided Local Feature Learning via Geometric and Semantic Synergy
Yi, Yang
Chen, Xieyuanli
Zhang, Jinpu
Shen, Hui
Hu, Dewen
Computer Vision and Pattern Recognition
Robust local feature detection and description are foundational tasks in computer vision. Existing methods primarily rely on single appearance cues for modeling, leading to unstable keypoints and insufficient descriptor discriminability. In this paper, we propose a multi-cue guided local feature learning framework that leverages semantic and geometric cues to synergistically enhance detection robustness and descriptor discriminability. Specifically, we construct a joint semantic-normal prediction head and a depth stability prediction head atop a lightweight backbone. The former leverages a shared 3D vector field to deeply couple semantic and normal cues, thereby resolving optimization interference from heterogeneous inconsistencies. The latter quantifies the reliability of local regions from a geometric consistency perspective, providing deterministic guidance for robust keypoint selection. Based on these predictions, we introduce the Semantic-Depth Aware Keypoint (SDAK) mechanism for feature detection. By coupling semantic reliability with depth stability, SDAK reweights keypoint responses to suppress spurious features in unreliable regions. For descriptor construction, we design a Unified Triple-Cue Fusion (UTCF) module, which employs a semantic-scheduled gating mechanism to adaptively inject multi-attribute features, improving descriptor discriminability. Extensive experiments on four benchmarks validate the effectiveness of the proposed framework. The source code and pre-trained model will be available at: https://github.com/yiyscut/GESS.git.
title GESS: Multi-cue Guided Local Feature Learning via Geometric and Semantic Synergy
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2604.05359