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Main Authors: Park, Yeji, Lee, Minyoung, Chun, Sanghyuk, Choe, Junsuk
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2508.13744
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author Park, Yeji
Lee, Minyoung
Chun, Sanghyuk
Choe, Junsuk
author_facet Park, Yeji
Lee, Minyoung
Chun, Sanghyuk
Choe, Junsuk
contents Large Vision-Language Models (LVLMs) demonstrate strong performance on single-image tasks. However, we observe that their performance degrades significantly when handling multi-image inputs. This occurs because visual cues from different images become entangled in the model's output. We refer to this phenomenon as cross-image information leakage. To address this issue, we propose FOCUS, a training-free and architecture-agnostic decoding strategy that mitigates cross-image information leakage during inference. FOCUS sequentially masks all but one image with random noise, guiding the model to focus on the single clean image. We repeat this process across all target images to obtain logits under partially masked contexts. These logits are aggregated and then contrastively refined using a noise-only reference input, which suppresses the leakage and yields more accurate outputs. FOCUS consistently improves performance across four multi-image benchmarks and diverse LVLM families. This demonstrates that FOCUS offers a general and practical solution for enhancing multi-image reasoning without additional training or architectural modifications.
format Preprint
id arxiv_https___arxiv_org_abs_2508_13744
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Mitigating Cross-Image Information Leakage in LVLMs for Multi-Image Tasks
Park, Yeji
Lee, Minyoung
Chun, Sanghyuk
Choe, Junsuk
Computer Vision and Pattern Recognition
Artificial Intelligence
Large Vision-Language Models (LVLMs) demonstrate strong performance on single-image tasks. However, we observe that their performance degrades significantly when handling multi-image inputs. This occurs because visual cues from different images become entangled in the model's output. We refer to this phenomenon as cross-image information leakage. To address this issue, we propose FOCUS, a training-free and architecture-agnostic decoding strategy that mitigates cross-image information leakage during inference. FOCUS sequentially masks all but one image with random noise, guiding the model to focus on the single clean image. We repeat this process across all target images to obtain logits under partially masked contexts. These logits are aggregated and then contrastively refined using a noise-only reference input, which suppresses the leakage and yields more accurate outputs. FOCUS consistently improves performance across four multi-image benchmarks and diverse LVLM families. This demonstrates that FOCUS offers a general and practical solution for enhancing multi-image reasoning without additional training or architectural modifications.
title Mitigating Cross-Image Information Leakage in LVLMs for Multi-Image Tasks
topic Computer Vision and Pattern Recognition
Artificial Intelligence
url https://arxiv.org/abs/2508.13744