Jiaqing Fan , Shenglong Hu , Long Wang , Kaihua Zhang , Bo Liu
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引用次数: 0
摘要
通常情况下,视频对象分割(VOS)在测试阶段总是采用半监督设置。VOS 的目的是在序列的后续帧中跟踪和分割一个或多个目标对象,但只给定初始帧中的地面实况分割掩码。VOS 的一个基本问题是如何更好地利用时间信息来提高准确性。为解决上述问题,我们提供了一个端到端框架,可同时提取当前帧的长期和短期历史序列信息作为时态记忆。集成时空架构由短期和长期记忆模块组成。具体来说,短期记忆模块利用基于高阶图的学习框架来模拟视频中相邻帧之间局部区域的细粒度时空交互,从而保持局部区域的时空视觉一致性。同时,为了缓解遮挡和漂移问题,长期记忆模块采用了简化门控递归单元(S-GRU)来模拟视频中的长期演变。此外,我们还设计了一个新颖的方向感知注意力模块,以补充增强对象表示,从而实现更稳健的分割。我们在三个主流 VOS 基准(包括 DAVIS 2017、DAVIS 2016 和 Youtube-VOS)上进行的实验表明,我们提出的解决方案在速度和准确性之间实现了公平的性能权衡。
Dual temporal memory network with high-order spatio-temporal graph learning for video object segmentation
Typically, Video Object Segmentation (VOS) always has the semi-supervised setting in the testing phase. The VOS aims to track and segment one or several target objects in the following frames in the sequence, only given the ground-truth segmentation mask in the initial frame. A fundamental issue in VOS is how to best utilize the temporal information to improve the accuracy. To address the aforementioned issue, we provide an end-to-end framework that simultaneously extracts long-term and short-term historical sequential information to current frame as temporal memories. The integrated temporal architecture consists of a short-term and a long-term memory modules. Specifically, the short-term memory module leverages a high-order graph-based learning framework to simulate the fine-grained spatial–temporal interactions between local regions across neighboring frames in a video, thereby maintaining the spatio-temporal visual consistency on local regions. Meanwhile, to relieve the occlusion and drift issues, the long-term memory module employs a Simplified Gated Recurrent Unit (S-GRU) to model the long evolutions in a video. Furthermore, we design a novel direction-aware attention module to complementarily augment the object representation for more robust segmentation. Our experiments on three mainstream VOS benchmarks, containing DAVIS 2017, DAVIS 2016, and Youtube-VOS, demonstrate that our proposed solution provides a fair tradeoff performance between both speed and accuracy.
期刊介绍:
Image and Vision Computing has as a primary aim the provision of an effective medium of interchange for the results of high quality theoretical and applied research fundamental to all aspects of image interpretation and computer vision. The journal publishes work that proposes new image interpretation and computer vision methodology or addresses the application of such methods to real world scenes. It seeks to strengthen a deeper understanding in the discipline by encouraging the quantitative comparison and performance evaluation of the proposed methodology. The coverage includes: image interpretation, scene modelling, object recognition and tracking, shape analysis, monitoring and surveillance, active vision and robotic systems, SLAM, biologically-inspired computer vision, motion analysis, stereo vision, document image understanding, character and handwritten text recognition, face and gesture recognition, biometrics, vision-based human-computer interaction, human activity and behavior understanding, data fusion from multiple sensor inputs, image databases.