考虑结构感知蒸馏的再平衡视觉语言检索

Yang Yang;Wenjuan Xi;Luping Zhou;Jinhui Tang
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引用次数: 0

摘要

视觉语言检索的目的是基于来自另一模态的查询,在一模态中搜索相似的实例。主要目标是学习潜在公共空间中的跨模态匹配表示。实际上,跨模态匹配的假设是模态平衡,其中每个模态包含足够的信息来表示其他模态。然而,噪声干扰和模态不足往往导致模态不平衡,使其成为实践中常见的现象。不平衡对检索性能的影响仍然是一个悬而未决的问题。在本文中,我们首先证明了当不平衡模态存在时,最终的跨模态匹配通常是次优的。当面对不平衡模态时,公共空间实例的结构会受到固有的影响,这对跨模态相似性测量提出了挑战。为了解决这个问题,我们强调了有意义的结构保留匹配的重要性。因此,我们提出了一种简单而有效的方法,通过学习结构保留的匹配表示来重新平衡跨模态匹配。具体来说,我们设计了一种新的多粒度跨模态匹配,它结合了结构感知蒸馏和跨模态匹配损失。而跨模态匹配损失约束了实例级匹配,结构感知蒸馏通过发展的关系匹配进一步规范了学习到的匹配表征与模态内表征之间的几何一致性。在不同数据集上进行的大量实验证实了我们的方法具有优越的跨模态检索性能,同时与基线模型相比增强了单模态检索能力。
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Rebalanced Vision-Language Retrieval Considering Structure-Aware Distillation
Vision-language retrieval aims to search for similar instances in one modality based on queries from another modality. The primary objective is to learn cross-modal matching representations in a latent common space. Actually, the assumption underlying cross-modal matching is modal balance, where each modality contains sufficient information to represent the others. However, noise interference and modality insufficiency often lead to modal imbalance, making it a common phenomenon in practice. The impact of imbalance on retrieval performance remains an open question. In this paper, we first demonstrate that ultimate cross-modal matching is generally sub-optimal for cross-modal retrieval when imbalanced modalities exist. The structure of instances in the common space is inherently influenced when facing imbalanced modalities, posing a challenge to cross-modal similarity measurement. To address this issue, we emphasize the importance of meaningful structure-preserved matching. Accordingly, we propose a simple yet effective method to rebalance cross-modal matching by learning structure-preserved matching representations. Specifically, we design a novel multi-granularity cross-modal matching that incorporates structure-aware distillation alongside the cross-modal matching loss. While the cross-modal matching loss constraints instance-level matching, the structure-aware distillation further regularizes the geometric consistency between learned matching representations and intra-modal representations through the developed relational matching. Extensive experiments on different datasets affirm the superior cross-modal retrieval performance of our approach, simultaneously enhancing single-modal retrieval capabilities compared to the baseline models.
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