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5 months ago

BAPose: Bottom-Up Pose Estimation with Disentangled Waterfall Representations

Artacho Bruno ; Savakis Andreas

BAPose: Bottom-Up Pose Estimation with Disentangled Waterfall
  Representations

Abstract

We propose BAPose, a novel bottom-up approach that achieves state-of-the-artresults for multi-person pose estimation. Our end-to-end trainable frameworkleverages a disentangled multi-scale waterfall architecture and incorporatesadaptive convolutions to infer keypoints more precisely in crowded scenes withocclusions. The multi-scale representations, obtained by the disentangledwaterfall module in BAPose, leverage the efficiency of progressive filtering inthe cascade architecture, while maintaining multi-scale fields-of-viewcomparable to spatial pyramid configurations. Our results on the challengingCOCO and CrowdPose datasets demonstrate that BAPose is an efficient and robustframework for multi-person pose estimation, achieving significant improvementson state-of-the-art accuracy.

Code Repositories

Benchmarks

BenchmarkMethodologyMetrics
multi-person-pose-estimation-on-cocoBAPose
AP: 0.727
Test AP: 71.2
Validation AP: 72.7
multi-person-pose-estimation-on-crowdposeBAPose (W32)
AP Easy: 79.9
AP Hard: 61.3
AP Medium: 73.4
mAP @0.5:0.95: 72.2

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BAPose: Bottom-Up Pose Estimation with Disentangled Waterfall Representations | Papers | HyperAI