BiVM: Accurate Binarized Neural Network for Efficient Video Matting
Haotong Qin, Xianglong Liu, Xudong Ma, Lei Ke, Yulun Zhang, Jie Luo, Michele Magno

TL;DR
BiVM introduces a novel binarized neural network architecture for real-time video matting that significantly improves accuracy and efficiency, making it suitable for edge devices and resource-constrained environments.
Contribution
The paper proposes a new binarized neural network with elastic structures and feature masking, enhancing accuracy and reducing computation for video matting.
Findings
Outperforms state-of-the-art binarized video matting methods
Achieves 14.3x reduction in computation costs
Achieves 21.6x reduction in storage costs
Abstract
Deep neural networks for real-time video matting suffer significant computational limitations on edge devices, hindering their adoption in widespread applications such as online conferences and short-form video production. Binarization emerges as one of the most common compression approaches with compact 1-bit parameters and efficient bitwise operations. However, accuracy and efficiency limitations exist in the binarized video matting network due to its degenerated encoder and redundant decoder. Following a theoretical analysis based on the information bottleneck principle, the limitations are mainly caused by the degradation of prediction-relevant information in the intermediate features and the redundant computation in prediction-irrelevant areas. We present BiVM, an accurate and resource-efficient Binarized neural network for Video Matting. First, we present a series of binarized…
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