Superpixel Segmentation With Fully Convolutional …
In the past few years, deep networks [45, 31, 29, 44] taking advantage of large-scale annotated data have gen-erated impressive stereo matching results. Recent meth-ods [17, 7, 8] employing 3D convolution achieve the state-of-the-art performance on public benchmarks. However, due to the memory constraints, these methods typically
Network, With, Matching, Fully, Segmentation, Superpixels, Convolutional, Superpixel segmentation with fully convolutional
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What Have We Learned From Deep Representations for …
openaccess.thecvf.comwhat these powerful models actually have learned. In this paper we shed light on deep spatiotemporal net-works by visualizing what excites the learned models us-ing activation maximization by backpropagating on the in-put. We are the first to visualize the hierarchical features
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arxiv.orgmatching and camera pose estimation tasks with indoor and outdoor datasets. The experiments show that LoFTR out-performs detector-based and detector-free feature matching baselines by a large margin. LoFTR also achieves state-of-the-art performance and ranks first among the published methods on two public benchmarks of visual localization.