CVApr 24, 2023

AutoFocusFormer: Image Segmentation off the Grid

AppleBerkeleyUW
arXiv:2304.12406v219 citationsh-index: 67
Originality Incremental advance
AI Analysis

This addresses the issue of poor segmentation of small objects in images for computer vision applications, representing an incremental advance.

The paper tackles the problem of imbalanced content density in image segmentation by proposing AutoFocusFormer (AFF), a backbone that performs adaptive downsampling to retain important pixels, leading to significant improvements over baseline models.

Real world images often have highly imbalanced content density. Some areas are very uniform, e.g., large patches of blue sky, while other areas are scattered with many small objects. Yet, the commonly used successive grid downsampling strategy in convolutional deep networks treats all areas equally. Hence, small objects are represented in very few spatial locations, leading to worse results in tasks such as segmentation. Intuitively, retaining more pixels representing small objects during downsampling helps to preserve important information. To achieve this, we propose AutoFocusFormer (AFF), a local-attention transformer image recognition backbone, which performs adaptive downsampling by learning to retain the most important pixels for the task. Since adaptive downsampling generates a set of pixels irregularly distributed on the image plane, we abandon the classic grid structure. Instead, we develop a novel point-based local attention block, facilitated by a balanced clustering module and a learnable neighborhood merging module, which yields representations for our point-based versions of state-of-the-art segmentation heads. Experiments show that our AutoFocusFormer (AFF) improves significantly over baseline models of similar sizes.

Code Implementations1 repo
Foundations

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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