CVAIMar 18, 2025

Dynamic Accumulated Attention Map for Interpreting Evolution of Decision-Making in Vision Transformer

arXiv:2503.14640v113 citationsh-index: 6Has CodePattern Recognition
Originality Incremental advance
AI Analysis

This provides a tool for researchers and practitioners to better interpret decision-making in ViT models, though it is incremental as it builds on existing visual explanation methods.

The authors tackled the problem of visualizing attention flow inside Vision Transformer (ViT) models by proposing Dynamic Accumulated Attention Map (DAAM), a novel visual explanation approach that reveals how attention regions evolve from top to bottom layers, with quantitative and qualitative analysis validating its effectiveness for both supervised and self-supervised ViTs.

Various Vision Transformer (ViT) models have been widely used for image recognition tasks. However, existing visual explanation methods can not display the attention flow hidden inside the inner structure of ViT models, which explains how the final attention regions are formed inside a ViT for its decision-making. In this paper, a novel visual explanation approach, Dynamic Accumulated Attention Map (DAAM), is proposed to provide a tool that can visualize, for the first time, the attention flow from the top to the bottom through ViT networks. To this end, a novel decomposition module is proposed to construct and store the spatial feature information by unlocking the [class] token generated by the self-attention module of each ViT block. The module can also obtain the channel importance coefficients by decomposing the classification score for supervised ViT models. Because of the lack of classification score in self-supervised ViT models, we propose dimension-wise importance weights to compute the channel importance coefficients. Such spatial features are linearly combined with the corresponding channel importance coefficients, forming the attention map for each block. The dynamic attention flow is revealed by block-wisely accumulating each attention map. The contribution of this work focuses on visualizing the evolution dynamic of the decision-making attention for any intermediate block inside a ViT model by proposing a novel decomposition module and dimension-wise importance weights. The quantitative and qualitative analysis consistently validate the effectiveness and superior capacity of the proposed DAAM for not only interpreting ViT models with the fully-connected layers as the classifier but also self-supervised ViT models. The code is available at https://github.com/ly9802/DynamicAccumulatedAttentionMap.

Code Implementations1 repo
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The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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