ARNet: Self-Supervised FG-SBIR with Unified Sample Feature Alignment and Multi-Scale Token Recycling
Jianan Jiang, Hao Tang, Zhilin Jiang, Weiren Yu, Di Wu

TL;DR
This paper introduces ARNet, a self-supervised FG-SBIR framework that uses unified feature alignment and multi-scale token recycling to improve sketch-image retrieval accuracy and scalability.
Contribution
It proposes a novel approach with dual weight-sharing networks, contrastive loss, and a multi-scale token recycling module for better feature alignment and representation.
Findings
Achieves superior results on CNN- and ViT-based backbones.
Introduces Cloths-V1, a new fashion sketch-image dataset.
Demonstrates effectiveness over existing FG-SBIR methods.
Abstract
Fine-Grained Sketch-Based Image Retrieval (FG-SBIR) aims to minimize the distance between sketches and corresponding images in the embedding space. However, scalability is hindered by the growing complexity of solutions, mainly due to the abstract nature of fine-grained sketches. In this paper, we propose an effective approach to narrow the gap between the two domains. It mainly facilitates unified mutual information sharing both intra- and inter-samples, rather than treating them as a single feature alignment problem between modalities. Specifically, our approach includes: (i) Employing dual weight-sharing networks to optimize alignment within the sketch and image domain, which also effectively mitigates model learning saturation issues. (ii) Introducing an objective optimization function based on contrastive loss to enhance the model's ability to align features in both intra- and…
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Code & Models
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Taxonomy
TopicsRetinal Imaging and Analysis · Data Stream Mining Techniques · Brain Tumor Detection and Classification
MethodsALIGN
