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Hyperpixel Flow: Semantic Correspondence with Multi-layer Neural Features
Juhong Min; Jongmin Lee; Jean Ponce; Minsu Cho

Abstract
Establishing visual correspondences under large intra-class variations requires analyzing images at different levels, from features linked to semantics and context to local patterns, while being invariant to instance-specific details. To tackle these challenges, we represent images by "hyperpixels" that leverage a small number of relevant features selected among early to late layers of a convolutional neural network. Taking advantage of the condensed features of hyperpixels, we develop an effective real-time matching algorithm based on Hough geometric voting. The proposed method, hyperpixel flow, sets a new state of the art on three standard benchmarks as well as a new dataset, SPair-71k, which contains a significantly larger number of image pairs than existing datasets, with more accurate and richer annotations for in-depth analysis.
Code Repositories
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| semantic-correspondence-on-caltech-101 | HPF | IoU: 63 LT-ACC: 87 |
| semantic-correspondence-on-pf-pascal | HPF | PCK: 88.3 |
| semantic-correspondence-on-pf-willow | HPF | PCK: 76.3 |
| semantic-correspondence-on-spair-71k | HPF | PCK: 28.2 |
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