English

Deep Self-Convolutional Activations Descriptor for Dense Cross-Modal Correspondence

Computer Vision and Pattern Recognition 2016-03-22 v1

Abstract

We present a novel descriptor, called deep self-convolutional activations (DeSCA), designed for establishing dense correspondences between images taken under different imaging modalities, such as different spectral ranges or lighting conditions. Motivated by descriptors based on local self-similarity (LSS), we formulate a novel descriptor by leveraging LSS in a deep architecture, leading to better discriminative power and greater robustness to non-rigid image deformations than state-of-the-art cross-modality descriptors. The DeSCA first computes self-convolutions over a local support window for randomly sampled patches, and then builds self-convolution activations by performing an average pooling through a hierarchical formulation within a deep convolutional architecture. Finally, the feature responses on the self-convolution activations are encoded through a spatial pyramid pooling in a circular configuration. In contrast to existing convolutional neural networks (CNNs) based descriptors, the DeSCA is training-free (i.e., randomly sampled patches are utilized as the convolution kernels), is robust to cross-modal imaging, and can be densely computed in an efficient manner that significantly reduces computational redundancy. The state-of-the-art performance of DeSCA on challenging cases of cross-modal image pairs is demonstrated through extensive experiments.

Keywords

Cite

@article{arxiv.1603.06327,
  title  = {Deep Self-Convolutional Activations Descriptor for Dense Cross-Modal Correspondence},
  author = {Seungryong Kim and Dongbo Min and Stephen Lin and Kwanghoon Sohn},
  journal= {arXiv preprint arXiv:1603.06327},
  year   = {2016}
}
R2 v1 2026-06-22T13:14:59.658Z