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4 months ago

GA-Net: Guided Aggregation Net for End-to-end Stereo Matching

Feihu Zhang; Victor Prisacariu; Ruigang Yang; Philip H.S. Torr

GA-Net: Guided Aggregation Net for End-to-end Stereo Matching

Abstract

In the stereo matching task, matching cost aggregation is crucial in both traditional methods and deep neural network models in order to accurately estimate disparities. We propose two novel neural net layers, aimed at capturing local and the whole-image cost dependencies respectively. The first is a semi-global aggregation layer which is a differentiable approximation of the semi-global matching, the second is the local guided aggregation layer which follows a traditional cost filtering strategy to refine thin structures. These two layers can be used to replace the widely used 3D convolutional layer which is computationally costly and memory-consuming as it has cubic computational/memory complexity. In the experiments, we show that nets with a two-layer guided aggregation block easily outperform the state-of-the-art GC-Net which has nineteen 3D convolutional layers. We also train a deep guided aggregation network (GA-Net) which gets better accuracies than state-of-the-art methods on both Scene Flow dataset and KITTI benchmarks.

Code Repositories

skumailraza/FRSNet-GA
pytorch
Mentioned in GitHub
feihuzhang/GANet
Official
pytorch
Mentioned in GitHub
HKBU-HPML/FADNet
pytorch
Mentioned in GitHub

Benchmarks

BenchmarkMethodologyMetrics
stereo-depth-estimation-on-springGA-Net
1px total: 23.225

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GA-Net: Guided Aggregation Net for End-to-end Stereo Matching | Papers | HyperAI