We present the deep self-correlation (DSC) descriptor for establishing dense correspondences between images taken under different imaging modalities, such as different spectral ranges or lighting conditions. We encode local self-similar structure in a pyramidal manner that yields both more precise localization ability and greater robustness to non-rigid image deformations. Specifically, DSC first computes multiple self-correlation surfaces with randomly sampled patches over a local support window, and then builds pyramidal self-correlation surfaces through average pooling on the surfaces. The feature responses on the self-correlation surfaces are then encoded through spatial pyramid pooling in a log-polar configuration. To better handle geo...
Deep networks are extremely adept at mapping a noisy, high-dimensional signal to a clean, low-dimens...
We introduce a fast deformable spatial pyramid (DSP) matching algorithm for computing dense pixel co...
This research proposes a novel unsupervised domain adaptation algorithm for cross-domain visual reco...
For cross-modal subspace clustering, the key point is how to exploit the correlation information bet...
For cross-modal subspace clustering, the key point is how to exploit the correlation information bet...
We develop a deep architecture to learn to find good correspondences for wide-baseline stereo. Given...
Abstract—We seek a practical method for establishing dense correspondences between two images with s...
We tackle the problem of establishing dense pixel-wise correspondences between a pair of images. In ...
International audienceOne big challenge in computer vision is to extract robust and discriminative l...
A fundamental problem in computer vision is the precise determination of correspondences between pai...
Fully-supervised CNN-based approaches for learning local image descriptors have shown remarkable res...
Some self-supervised cross-modal learning approaches have recently demonstrated the potential of ima...
In this paper, we introduce a local image descriptor that is inspired by earlier detectors such as S...
We present an algorithm for estimating dense image correspondences. Our versatile approach lends its...
We introduce deep scale-spaces (DSS), a generalization of convolutional neural networks, exploiting ...
Deep networks are extremely adept at mapping a noisy, high-dimensional signal to a clean, low-dimens...
We introduce a fast deformable spatial pyramid (DSP) matching algorithm for computing dense pixel co...
This research proposes a novel unsupervised domain adaptation algorithm for cross-domain visual reco...
For cross-modal subspace clustering, the key point is how to exploit the correlation information bet...
For cross-modal subspace clustering, the key point is how to exploit the correlation information bet...
We develop a deep architecture to learn to find good correspondences for wide-baseline stereo. Given...
Abstract—We seek a practical method for establishing dense correspondences between two images with s...
We tackle the problem of establishing dense pixel-wise correspondences between a pair of images. In ...
International audienceOne big challenge in computer vision is to extract robust and discriminative l...
A fundamental problem in computer vision is the precise determination of correspondences between pai...
Fully-supervised CNN-based approaches for learning local image descriptors have shown remarkable res...
Some self-supervised cross-modal learning approaches have recently demonstrated the potential of ima...
In this paper, we introduce a local image descriptor that is inspired by earlier detectors such as S...
We present an algorithm for estimating dense image correspondences. Our versatile approach lends its...
We introduce deep scale-spaces (DSS), a generalization of convolutional neural networks, exploiting ...
Deep networks are extremely adept at mapping a noisy, high-dimensional signal to a clean, low-dimens...
We introduce a fast deformable spatial pyramid (DSP) matching algorithm for computing dense pixel co...
This research proposes a novel unsupervised domain adaptation algorithm for cross-domain visual reco...