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Main Authors: Qu, Chenyuan, Chen, Hao, Jiao, Jianbo
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2510.14536
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author Qu, Chenyuan
Chen, Hao
Jiao, Jianbo
author_facet Qu, Chenyuan
Chen, Hao
Jiao, Jianbo
contents Exploring and understanding efficient image representations is a long-standing challenge in computer vision. While deep learning has achieved remarkable progress across image understanding tasks, its internal representations are often opaque, making it difficult to interpret how visual information is processed. In contrast, classical visual descriptors (e.g. edge, colour, and intensity distribution) have long been fundamental to image analysis and remain intuitively understandable to humans. Motivated by this gap, we ask a central question: Can modern learning benefit from these classical cues? In this paper, we answer it with VisualSplit, a framework that explicitly decomposes images into decoupled classical descriptors, treating each as an independent but complementary component of visual knowledge. Through a reconstruction-driven pre-training scheme, VisualSplit learns to capture the essence of each visual descriptor while preserving their interpretability. By explicitly decomposing visual attributes, our method inherently facilitates effective attribute control in various advanced visual tasks, including image generation and editing, extending beyond conventional classification and segmentation, suggesting the effectiveness of this new learning approach for visual understanding. Project page: https://chenyuanqu.com/VisualSplit/.
format Preprint
id arxiv_https___arxiv_org_abs_2510_14536
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Exploring Image Representation with Decoupled Classical Visual Descriptors
Qu, Chenyuan
Chen, Hao
Jiao, Jianbo
Computer Vision and Pattern Recognition
Exploring and understanding efficient image representations is a long-standing challenge in computer vision. While deep learning has achieved remarkable progress across image understanding tasks, its internal representations are often opaque, making it difficult to interpret how visual information is processed. In contrast, classical visual descriptors (e.g. edge, colour, and intensity distribution) have long been fundamental to image analysis and remain intuitively understandable to humans. Motivated by this gap, we ask a central question: Can modern learning benefit from these classical cues? In this paper, we answer it with VisualSplit, a framework that explicitly decomposes images into decoupled classical descriptors, treating each as an independent but complementary component of visual knowledge. Through a reconstruction-driven pre-training scheme, VisualSplit learns to capture the essence of each visual descriptor while preserving their interpretability. By explicitly decomposing visual attributes, our method inherently facilitates effective attribute control in various advanced visual tasks, including image generation and editing, extending beyond conventional classification and segmentation, suggesting the effectiveness of this new learning approach for visual understanding. Project page: https://chenyuanqu.com/VisualSplit/.
title Exploring Image Representation with Decoupled Classical Visual Descriptors
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2510.14536