Unsupervised cross-spectral stereo matching aims at recovering disparity given cross-spectral image pairs without any depth or disparity supervision. The estimated depth provides additional information complementary to original images, which can be helpful for other vision tasks such as tracking, recognition and detection. However, there are large appearance variations between images from different spectral bands, which is a challenge for cross-spectral stereo matching. Existing deep unsupervised stereo matching methods are sensitive to the appearance variations and do not perform well on cross-spectral data. We propose a novel unsupervised crossspectral stereo matching framework based on image-to-image translation. First, a style adaptatio...
Mutual information (MI) has shown promise as an effective\ud stereo matching measure for images affe...
Strong geometric and radiometric distortions often exist in optical wide-baseline stereo images, and...
Deep learning-based methods have made remarkable progress for stereo matching in terms of accuracy. ...
Stereo matching networks based on deep learning are widely developed and can obtain excellent dispar...
We present a deep architecture and learning framework for establishing correspondences across cross-...
A consistent stereo matching (CSM) algorithm under varying radiometric conditions, such as lighting ...
Recent ground-breaking works have shown that deep neural networks can be trained end-to-end to regre...
Abstract Robot vision technology based on binocular vision holds tremendous potential for developmen...
Stereo vision is a flourishing field, attracting the attention of many researchers. Recently, levera...
We address the problem of registering synchronized color (RGB) and multi-spectral (MS) images featur...
As an essential task in remote sensing, disparity estimation of high-resolution stereo images is sti...
Cross-spectral image patch matching is still challenging due to significant nonlinear differences be...
Deep end-to-end learning based stereo matching methods have achieved great success as witnessed by t...
End-to-end deep-learning networks recently demonstrated extremely good performance for stereo matchi...
none4siEnd-to-end deep networks represent the state of the art for stereo matching. While excelling...
Mutual information (MI) has shown promise as an effective\ud stereo matching measure for images affe...
Strong geometric and radiometric distortions often exist in optical wide-baseline stereo images, and...
Deep learning-based methods have made remarkable progress for stereo matching in terms of accuracy. ...
Stereo matching networks based on deep learning are widely developed and can obtain excellent dispar...
We present a deep architecture and learning framework for establishing correspondences across cross-...
A consistent stereo matching (CSM) algorithm under varying radiometric conditions, such as lighting ...
Recent ground-breaking works have shown that deep neural networks can be trained end-to-end to regre...
Abstract Robot vision technology based on binocular vision holds tremendous potential for developmen...
Stereo vision is a flourishing field, attracting the attention of many researchers. Recently, levera...
We address the problem of registering synchronized color (RGB) and multi-spectral (MS) images featur...
As an essential task in remote sensing, disparity estimation of high-resolution stereo images is sti...
Cross-spectral image patch matching is still challenging due to significant nonlinear differences be...
Deep end-to-end learning based stereo matching methods have achieved great success as witnessed by t...
End-to-end deep-learning networks recently demonstrated extremely good performance for stereo matchi...
none4siEnd-to-end deep networks represent the state of the art for stereo matching. While excelling...
Mutual information (MI) has shown promise as an effective\ud stereo matching measure for images affe...
Strong geometric and radiometric distortions often exist in optical wide-baseline stereo images, and...
Deep learning-based methods have made remarkable progress for stereo matching in terms of accuracy. ...