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Main Author: Li, YiZhou
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2507.21761
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author Li, YiZhou
author_facet Li, YiZhou
contents We present a compact encoder for image categorization that emphasizes computation economy through content-conditioned multi-pass processing. The model employs a single lightweight core block that can be re-applied a small number of times, while a simple score-based selector decides whether further passes are beneficial for each region unit in the feature map. This design provides input-conditioned depth without introducing heavy auxiliary modules or specialized pretraining. On standard benchmarks, the approach attains competitive accuracy with reduced parameters, lower floating-point operations, and faster inference compared to similarly sized baselines. The method keeps the architecture minimal, implements module reuse to control footprint, and preserves stable training via mild regularization on selection scores. We discuss implementation choices for efficient masking, pass control, and representation caching, and show that the multi-pass strategy transfers well to several datasets without requiring task-specific customization.
format Preprint
id arxiv_https___arxiv_org_abs_2507_21761
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle IMC-Net: A Lightweight Content-Conditioned Encoder with Multi-Pass Processing for Image Classification
Li, YiZhou
Computer Vision and Pattern Recognition
We present a compact encoder for image categorization that emphasizes computation economy through content-conditioned multi-pass processing. The model employs a single lightweight core block that can be re-applied a small number of times, while a simple score-based selector decides whether further passes are beneficial for each region unit in the feature map. This design provides input-conditioned depth without introducing heavy auxiliary modules or specialized pretraining. On standard benchmarks, the approach attains competitive accuracy with reduced parameters, lower floating-point operations, and faster inference compared to similarly sized baselines. The method keeps the architecture minimal, implements module reuse to control footprint, and preserves stable training via mild regularization on selection scores. We discuss implementation choices for efficient masking, pass control, and representation caching, and show that the multi-pass strategy transfers well to several datasets without requiring task-specific customization.
title IMC-Net: A Lightweight Content-Conditioned Encoder with Multi-Pass Processing for Image Classification
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2507.21761