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SCPNet: Unsupervised Cross-modal Homography Estimation via Intra-modal Self-supervised Learning

About

We propose a novel unsupervised cross-modal homography estimation framework based on intra-modal Self-supervised learning, Correlation, and consistent feature map Projection, namely SCPNet. The concept of intra-modal self-supervised learning is first presented to facilitate the unsupervised cross-modal homography estimation. The correlation-based homography estimation network and the consistent feature map projection are combined to form the learnable architecture of SCPNet, boosting the unsupervised learning framework. SCPNet is the first to achieve effective unsupervised homography estimation on the satellite-map image pair cross-modal dataset, GoogleMap, under [-32,+32] offset on a 128x128 image, leading the supervised approach MHN by 14.0% of mean average corner error (MACE). We further conduct extensive experiments on several cross-modal/spectral and manually-made inconsistent datasets, on which SCPNet achieves the state-of-the-art (SOTA) performance among unsupervised approaches, and owns 49.0%, 25.2%, 36.4%, and 10.7% lower MACEs than the supervised approach MHN. Source code is available at https://github.com/RM-Zhang/SCPNet.

Runmin Zhang, Jun Ma, Si-Yuan Cao, Lun Luo, Beinan Yu, Shu-Jie Chen, Junwei Li, Hui-Liang Shen• 2024

Related benchmarks

TaskDatasetResultRank
Homography EstimationRGB-NIR
MACE4.78
49
Homography EstimationGoogleMap
MACE4.35
35
Homography EstimationGoogleEarth
MACE2.794
30
Homography EstimationPDSCOCO
MACE4.862
30
Homography EstimationPDSCOCO (test)
MACE3.749
26
Homography EstimationFlash/no-flash
MACE2.67
19
Homography EstimationRGB-NIR cross-dataset (test)
MACE14.281
13
Homography EstimationGoogleMap cross-dataset (test)
MACE28.291
13
Homography EstimationRGB-NIR (test)
MACE12.528
11
Rigid RegistrationRGB-NIR (test)
Registration Error (RE)3.056
7
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