Litcius/Paper detail

EDNet: Efficient Disparity Estimation with Cost Volume Combination and Attention-based Spatial Residual

Songyan Zhang, Zhicheng Wang, Qiang Wang, Jinshuo Zhang, Gang Wei, Xiaowen Chu

202120 citationsDOI

Abstract

Existing state-of-the-art disparity estimation works mostly leverage the 4D concatenation volume and construct a very deep 3D convolution neural network (CNN) for disparity regression, which is inefficient due to the high memory consumption and slow inference speed. In this paper, we propose a network named EDNet for efficient disparity estimation. Firstly, we construct a combined volume which incorporates contextual information from the squeezed concatenation volume and feature similarity measurement from the correlation volume. The combined volume can be next aggregated by 2D convolutions which are faster and require less memory than 3D convolutions. Secondly, we propose an attention-based spatial residual module to generate attention-aware residual features. The attention mechanism is applied to provide intuitive spatial evidence about inaccurate regions with the help of error maps at multiple scales and thus improve the residual learning efficiency. Extensive experiments on the Scene Flow and KITTI datasets show that EDNet outperforms the previous 3D CNN based works and achieves state-of-the-art performance with significantly faster speed and less memory consumption.

Topics & Concepts

Computer scienceConcatenation (mathematics)ResidualLeverage (statistics)Artificial intelligenceConvolution (computer science)Volume (thermodynamics)Convolutional neural networkInferenceConstruct (python library)Pattern recognition (psychology)Deep learningArtificial neural networkAlgorithmMathematicsProgramming languagePhysicsCombinatoricsQuantum mechanicsAdvanced Vision and ImagingHuman Pose and Action RecognitionDomain Adaptation and Few-Shot Learning