This paper introduces an online motion rate adaptation scheme for learned video compression, with the aim of achieving content-adaptive coding on individual test sequences to mitigate the domain gap between training and test data. It features a patch-level bit allocation map, termed the $\alpha$-map, to trade off between the bit rates for motion and inter-frame coding in a spatially-adaptive manner. We optimize the $\alpha$-map through an online back-propagation scheme at inference time. Moreover, we incorporate a look-ahead mechanism to consider its impact on future frames. Extensive experimental results confirm that the proposed scheme, when integrated into a conditional learned video codec, is able to adapt motion bit rate effectively, showing much improved rate-distortion performance particularly on test sequences with complicated motion characteristics.
翻译:本文介绍了一个在线运动率调整计划,用于学习视频压缩,目的是在单个测试序列上实现内容适应性编码,以缩小培训和测试数据之间的域间差距。它包含一个补丁级位数分配图,称为 $\ alpha$-map,以空间适应方式交换运动比特率和框架间编码比特率。我们通过在推论时间的在线反向调整计划优化$\ alpha$-map。此外,我们引入了一个外观机制,以考虑其对未来框架的影响。广泛的实验结果证实,如果将拟议方案纳入一个有条件的学习视频代码,能够有效地调整运动比特率,显示大大改进的率扭曲性能,特别是在具有复杂动作特征的测试序列上。