CVApr 14, 2021

Pose Recognition with Cascade Transformers

arXiv:2104.06976v1262 citations
Originality Incremental advance
AI Analysis

This work addresses pose recognition for computer vision applications, but it is incremental as it builds on existing regression-based methods with a Transformer-based refinement process.

The paper tackles pose recognition by proposing a regression-based method using cascade Transformers, achieving competitive results compared to other regression-based approaches.

In this paper, we present a regression-based pose recognition method using cascade Transformers. One way to categorize the existing approaches in this domain is to separate them into 1). heatmap-based and 2). regression-based. In general, heatmap-based methods achieve higher accuracy but are subject to various heuristic designs (not end-to-end mostly), whereas regression-based approaches attain relatively lower accuracy but they have less intermediate non-differentiable steps. Here we utilize the encoder-decoder structure in Transformers to perform regression-based person and keypoint detection that is general-purpose and requires less heuristic design compared with the existing approaches. We demonstrate the keypoint hypothesis (query) refinement process across different self-attention layers to reveal the recursive self-attention mechanism in Transformers. In the experiments, we report competitive results for pose recognition when compared with the competing regression-based methods.

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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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