CVIVSep 25, 2023

Bitstream-Corrupted Video Recovery: A Novel Benchmark Dataset and Method

arXiv:2309.13890v216 citationsh-index: 71Has Code
Originality Incremental advance
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This addresses the gap in realistic video recovery for applications like telepresence and live streaming, though it is incremental as it builds on existing video inpainting techniques.

The paper tackles the problem of recovering videos corrupted by bitstream errors in real-world communication scenarios, introducing the BSCV benchmark dataset with over 28,000 clips and a plug-and-play module that demonstrates advantages over existing methods.

The past decade has witnessed great strides in video recovery by specialist technologies, like video inpainting, completion, and error concealment. However, they typically simulate the missing content by manual-designed error masks, thus failing to fill in the realistic video loss in video communication (e.g., telepresence, live streaming, and internet video) and multimedia forensics. To address this, we introduce the bitstream-corrupted video (BSCV) benchmark, the first benchmark dataset with more than 28,000 video clips, which can be used for bitstream-corrupted video recovery in the real world. The BSCV is a collection of 1) a proposed three-parameter corruption model for video bitstream, 2) a large-scale dataset containing rich error patterns, multiple corruption levels, and flexible dataset branches, and 3) a plug-and-play module in video recovery framework that serves as a benchmark. We evaluate state-of-the-art video inpainting methods on the BSCV dataset, demonstrating existing approaches' limitations and our framework's advantages in solving the bitstream-corrupted video recovery problem. The benchmark and dataset are released at https://github.com/LIUTIGHE/BSCV-Dataset.

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