We propose an efficient multi-view stereo (MVS) network for infering depth value from multiple RGB images. Recent studies have shown that mapping the geometric relationship in real space to neural network is an essential topic of the MVS problem. Specifically, these methods focus on how to express the correspondence between different views by constructing a nice cost volume. In this paper, we propose a more complete cost volume construction approach based on absorbing previous experience. First of all, we introduce the self-attention mechanism to fully aggregate the dominant information from input images and accurately model the long-range dependency, so as to selectively aggregate reference features. Secondly, we introduce the group-wise c...
Stereo matching has been solved as a supervised learning task with convolutional neural network (CNN...
While recent deep learning-based stereo-matching networks have shown outstanding advances, there are...
International audienceIn this article, we present a very lightweight neural network architecture, tr...
Abstract Deep learning has recently been proven to deliver excellent performance in multi-view stere...
Deep learning has shown to be effective for depth inference in multi-view stereo (MVS). However, the...
We present ATLAS-MVSNet, an end-to-end deep learning architecture relying on local attention layers ...
In this paper, we present a learning-based approach for multi-view stereo (MVS), i.e., estimate the ...
We present DeepMVS, a deep convolutional neural network (ConvNet) for multi-view stereo reconstructi...
We propose a novel lightweight network for stereo estimation. Our network consists of a fully-convol...
Deep learning-based methods have made remarkable progress for stereo matching in terms of accuracy. ...
Over the years, learning-based multi-view stereo methods have achieved great success based on their ...
Abstract The disparity map produced by matching a pair of rectified stereo images provides estimated...
In this paper, we propose a novel multi-tasking network for stereo matching. The proposed network is...
The cost volume plays a pivotal role in stereo matching, usually working as an optimization object. ...
Existing learning-based multi-view stereo (MVS) methods rely on the depth range to build the 3D cost...
Stereo matching has been solved as a supervised learning task with convolutional neural network (CNN...
While recent deep learning-based stereo-matching networks have shown outstanding advances, there are...
International audienceIn this article, we present a very lightweight neural network architecture, tr...
Abstract Deep learning has recently been proven to deliver excellent performance in multi-view stere...
Deep learning has shown to be effective for depth inference in multi-view stereo (MVS). However, the...
We present ATLAS-MVSNet, an end-to-end deep learning architecture relying on local attention layers ...
In this paper, we present a learning-based approach for multi-view stereo (MVS), i.e., estimate the ...
We present DeepMVS, a deep convolutional neural network (ConvNet) for multi-view stereo reconstructi...
We propose a novel lightweight network for stereo estimation. Our network consists of a fully-convol...
Deep learning-based methods have made remarkable progress for stereo matching in terms of accuracy. ...
Over the years, learning-based multi-view stereo methods have achieved great success based on their ...
Abstract The disparity map produced by matching a pair of rectified stereo images provides estimated...
In this paper, we propose a novel multi-tasking network for stereo matching. The proposed network is...
The cost volume plays a pivotal role in stereo matching, usually working as an optimization object. ...
Existing learning-based multi-view stereo (MVS) methods rely on the depth range to build the 3D cost...
Stereo matching has been solved as a supervised learning task with convolutional neural network (CNN...
While recent deep learning-based stereo-matching networks have shown outstanding advances, there are...
International audienceIn this article, we present a very lightweight neural network architecture, tr...