Event-based Optical Flow via Transforming into Motion-dependent View.

Zengyu Wan, Yang Wang, Zhai Wei, Ganchao Tan, Yang Cao, Zheng-Jun Zha
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Abstract

Event cameras respond to temporal dynamics, helping to resolve ambiguities in spatio-temporal changes for optical flow estimation. However, the unique spatio-temporal event distribution challenges the feature extraction, and the direct construction of motion representation through the orthogonal view is less than ideal due to the entanglement of appearance and motion. This paper proposes to transform the orthogonal view into a motion-dependent one for enhancing event-based motion representation and presents a Motion View-based Network (MV-Net) for practical optical flow estimation. Specifically, this motion-dependent view transformation is achieved through the Event View Transformation Module, which captures the relationship between the steepest temporal changes and motion direction, incorporating these temporal cues into the view transformation process for feature gathering. This module includes two phases: extracting the temporal evolution clues by central difference operation in the extraction phase and capturing the motion pattern by evolution-guided deformable convolution in the perception phase. Besides, the MV-Net constructs an eccentric downsampling process to avoid response weakening from the sparsity of events in the downsampling stage. The whole network is trained end-to-end in a self-supervised manner, and the evaluations conducted on four challenging datasets reveal the superior performance of the proposed model compared to state-of-the-art (SOTA) methods.

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通过转换为运动视图实现基于事件的光流。
事件摄像机能对时间动态做出反应,有助于解决光流估计中时空变化的模糊性。然而,独特的时空事件分布给特征提取带来了挑战,而且由于外观和运动的纠缠,通过正交视图直接构建运动表示法并不理想。本文提出将正交视图转换为与运动相关的视图,以增强基于事件的运动表示,并提出了一种基于运动视图的网络(MV-Net),用于实际的光流估计。具体来说,这种与运动相关的视图转换是通过事件视图转换模块实现的,该模块捕捉最陡峭的时间变化与运动方向之间的关系,并将这些时间线索纳入视图转换过程以收集特征。该模块包括两个阶段:在提取阶段,通过中心差分运算提取时间演化线索;在感知阶段,通过演化引导的可变形卷积捕捉运动模式。此外,MV-网络还构建了一个偏心下采样过程,以避免在下采样阶段因事件稀疏而导致响应减弱。整个网络是以自我监督的方式进行端到端训练的,在四个具有挑战性的数据集上进行的评估表明,与最先进的(SOTA)方法相比,所提出的模型具有更优越的性能。
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