用于视频喷漆的时空推理变压器网络

Gajanan Tudavekar, S. Saraf, Sanjay R. Patil
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引用次数: 0

摘要

视频补绘旨在以视觉愉悦的方式完成视频帧中缺失的区域。视频绘画是一项令人兴奋的任务,因为各种各样的运动跨越不同的帧。现有的方法通常是利用注意力模型从其他帧中寻找损坏的内容来重新绘制视频。然而,这些方法由于来自时空维度的注意力权重不规则而受到影响,从而在绘制的视频中产生伪影。为了克服上述问题,提出了时空推理变压器网络(STITN)。stin对要绘制的帧进行对齐并同时绘制所有帧,并且一个时空对抗损失函数改进了stin。我们的方法在定量和定性评估方面比现有的深度学习方法要好得多。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Spatio-Temporal Inference Transformer Network for Video Inpainting
Video inpainting aims to complete in a visually pleasing way the missing regions in video frames. Video inpainting is an exciting task due to the variety of motions across different frames. The existing methods usually use attention models to inpaint videos by seeking the damaged content from other frames. Nevertheless, these methods suffer due to irregular attention weight from spatio-temporal dimensions, thus giving rise to artifacts in the inpainted video. To overcome the above problem, Spatio-Temporal Inference Transformer Network (STITN) has been proposed. The STITN aligns the frames to be inpainted and concurrently inpaints all the frames, and a spatio-temporal adversarial loss function improves the STITN. Our method performs considerably better than the existing deep learning approaches in quantitative and qualitative evaluation.
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