PPML: Metric Learning with Prior Probability for Video Object Segmentation

Hangshi Zhong, Zhentao Tan, Bin Liu, Weihai Li, Nenghai Yu
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Abstract

Video object segmentation plays an important role in computer vision and has attracted much attention. Although many recent works have removed the fine-tuning process in pursuit of fast inference speed, while achieving high segmentation accuracy, they are still far from being real-time. In this paper, we regard this task as a feature matching problem and propose a prior probability based metric learning (PPML) method for faster inference speed and higher segmentation accuracy. The proposed method consists of two ingredients: a novel template space updating strategy that improves the efficiency of segmentation by avoiding the explosion of data in template space, and a novel feature matching method which applies more potential probability information through integrating the prior of the first frame and the predicted score of previous frames. Experimental results on DAVIS datasets demonstrate that the proposed method reaches the state-of-the-art competitive performance and is more efficient in time consumption.
基于先验概率的度量学习用于视频对象分割
视频目标分割在计算机视觉中占有重要地位,一直受到人们的关注。虽然最近的许多作品为了追求快速的推理速度,在实现高分割精度的同时,去掉了微调过程,但离实时还差得很远。本文将此任务视为特征匹配问题,并提出了一种基于先验概率的度量学习(PPML)方法,以提高推理速度和分割精度。该方法由两部分组成:一是采用新的模板空间更新策略,通过避免模板空间中的数据爆炸来提高分割效率;二是采用新的特征匹配方法,通过整合第一帧的先验和前几帧的预测分数来应用更多的潜在概率信息。在DAVIS数据集上的实验结果表明,该方法达到了最先进的竞争性能,并且在时间消耗上更加高效。
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