We address the problem of registering synchronized color (RGB) and multi-spectral (MS) images featuring very different resolution by solving stereo matching correspondences. Purposely, we introduce a novel RGB-MS dataset framing 13 different scenes in indoor environments and providing a total of 34 image pairs annotated with semi-dense, high-resolution ground-truth labels in the form of disparity maps. To tackle the task, we propose a deep learning architecture trained in a self-supervised manner by exploiting a further RGB camera, required only during training data acquisition. In this setup, we can conveniently learn cross-modal matching in the absence of ground-truth labels by distilling knowledge from an easier RGB-RGB matching task bas...
Scene recognition is one of the basic problems in computer vision research with extensive applicatio...
This paper addresses the object recognition problem using multiple-domain inputs. We present a novel...
none4siEnd-to-end deep networks represent the state of the art for stereo matching. While excelling...
We address the problem of registering synchronized color (RGB) and multi-spectral (MS) images featur...
We address the problem of registering synchronized color (RGB) and multi-spectral (MS) images featur...
Matching with hidden information which is available only during training and not during testing has ...
Comparison in the RGB domain is not suitable for precise color matching, due to the strong dependenc...
The precise determination of correspondences between pairs of images is still a fundamental building...
© 1979-2012 IEEE. In this work, we propose a framework for recognizing RGB images or videos by learn...
Person re-identification is a key challenge for surveillance across multiple sensors. Prompted by th...
RGB-D data has turned out to be a very useful representation for solving fundamental computer visio...
Person re-identification is a key challenge for surveillance across multiple sensors. Prompted by th...
We develop a deep learning-based matching method between an RGB (red, green and blue) and an infrare...
Unsupervised cross-spectral stereo matching aims at recovering disparity given cross-spectral image ...
Cross-spectral local feature matching between visual and thermal images benefits many vision tasks i...
Scene recognition is one of the basic problems in computer vision research with extensive applicatio...
This paper addresses the object recognition problem using multiple-domain inputs. We present a novel...
none4siEnd-to-end deep networks represent the state of the art for stereo matching. While excelling...
We address the problem of registering synchronized color (RGB) and multi-spectral (MS) images featur...
We address the problem of registering synchronized color (RGB) and multi-spectral (MS) images featur...
Matching with hidden information which is available only during training and not during testing has ...
Comparison in the RGB domain is not suitable for precise color matching, due to the strong dependenc...
The precise determination of correspondences between pairs of images is still a fundamental building...
© 1979-2012 IEEE. In this work, we propose a framework for recognizing RGB images or videos by learn...
Person re-identification is a key challenge for surveillance across multiple sensors. Prompted by th...
RGB-D data has turned out to be a very useful representation for solving fundamental computer visio...
Person re-identification is a key challenge for surveillance across multiple sensors. Prompted by th...
We develop a deep learning-based matching method between an RGB (red, green and blue) and an infrare...
Unsupervised cross-spectral stereo matching aims at recovering disparity given cross-spectral image ...
Cross-spectral local feature matching between visual and thermal images benefits many vision tasks i...
Scene recognition is one of the basic problems in computer vision research with extensive applicatio...
This paper addresses the object recognition problem using multiple-domain inputs. We present a novel...
none4siEnd-to-end deep networks represent the state of the art for stereo matching. While excelling...