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一种改进的视频分割网络及其全局信息优化方法

张琳 陆耀 卢丽华 周天飞 史青宣

张琳, 陆耀, 卢丽华, 周天飞, 史青宣. 一种改进的视频分割网络及其全局信息优化方法. 自动化学报, 2022, 48(3): 787−796 doi: 10.16383/j.aas.c190292
引用本文: 张琳, 陆耀, 卢丽华, 周天飞, 史青宣. 一种改进的视频分割网络及其全局信息优化方法. 自动化学报, 2022, 48(3): 787−796 doi: 10.16383/j.aas.c190292
Zhang Lin, Lu Yao, Lu Li-Hua, Zhou Tian-Fei, Shi Qing-Xuan. An improved video segmentation network and its global information optimization method. Acta Automatica Sinica, 2022, 48(3): 787−796 doi: 10.16383/j.aas.c190292
Citation: Zhang Lin, Lu Yao, Lu Li-Hua, Zhou Tian-Fei, Shi Qing-Xuan. An improved video segmentation network and its global information optimization method. Acta Automatica Sinica, 2022, 48(3): 787−796 doi: 10.16383/j.aas.c190292

一种改进的视频分割网络及其全局信息优化方法

doi: 10.16383/j.aas.c190292
基金项目: 国家自然科学基金 (61273273), 国家重点研发计划 (2017YFC0112001) 资助
详细信息
    作者简介:

    张琳:北京理工大学计算机学院博士研究生. 北方电子设备研究所助理研究员. 主要研究方向为视频物体显著性分析与视频分割. E-mail: zhanglin@bit.edu.cn

    陆耀:北京理工大学计算机学院教授. 主要研究方向为视觉神经计算, 图像图形处理与视频分析, 模式识别和机器学习. 本文通信作者. E-mail: vis_yl@bit.edu.cn

    卢丽华:北京理工大学计算机学院博士研究生. 主要研究方向为单人及群体行为识别和视频分割. E-mail: lulihua@bit.edu.cn

    周天飞:北京理工大学计算机学院博士. 主要研究方向为运动物体跟踪, 视频分割及行为识别.E-mail: ztfei.debug@gmail.com

    史青宣:河北大学网络空间安全与计算机学院副教授. 主要研究方向为计算机视觉, 模式识别, 机器学习. E-mail: shiqingxuan@bit.edu.cn

An Improved Video Segmentation Network and Its Global Information Optimization Method

Funds: Supported by National Natural Science Foundation of China (61273273) and National Key Research and Development Program of China (2017YFC0112001)
More Information
    Author Bio:

    ZHANG Lin Ph.D. candidate at the School of Computer Science and Technology, Beijing Institute of Technology, and assistant research fellow at the Institute of North Electronic Equipment. Her research interest covers video saliency and video segmentation

    LU Yao Professor at the School of Computer Science and Technology, Beijing Institute of Technology. His research interest covers neural network, image processing and video analysis, pattern recognition, and machine learning. Corresponding author of this paper

    LU Li-Hua Ph.D. candidate at the School of Computer Science and Technology, Beijing Institute of Technology. Her research interest covers collective activity recognition, action recognition, and video segmentation

    ZHOU Tian-Fei Ph.D. at the School of Computer Science and Technology, Beijing Institute of Technology. His research interest covers visual tracking, video segmentation, and action recognition

    SHI Qing-Xuan Associate professor at the School of Cyber Security and Computer, Hebei University. Her research interest covers computer vision, pattern recognition, and machine learning

  • 摘要: 提出了一种基于注意力机制的视频分割网络及其全局信息优化训练方法. 该方法包含一个改进的视频分割网络, 在对视频中的物体进行分割后, 利用初步分割的结果作为先验信息对网络优化, 再次分割得到最终结果. 该分割网络是一种双流卷积网络, 以视频图像和光流图像作为输入, 分别提取图像的表观信息和运动信息, 最终融合得到分割掩膜(Segmentation mask). 网络中嵌入了一个新的卷积注意力模块, 应用于卷积网络的高层次特征与相邻低层次特征之间, 使得高层语义特征可以定位低层特征中的重要区域, 提高网络的收敛速度和分割准确度. 在初步分割之后, 本方法提出利用初步结果作为监督信息对表观网络的权值进行微调, 使其辨识前景物体的特征, 进一步提高双流网络的分割效果. 在公开数据集DAVIS上的实验结果表明, 该方法可准确地分割出视频中时空显著的物体, 效果优于同类双流分割方法. 对注意力模块的对比分析实验表明, 该注意力模块可以极大地提高分割网络的效果, 较本方法的基准方法(Baseline)有很大的提高.
  • 图  1  基于注意力的视频物体分割方法框架图

    Fig.  1  The framework of proposed video object segmentation method with attention mechanism

    图  2  卷积注意力模块的结构

    Fig.  2  The architecture of the convolutional attention module

    图  3  表观的特征提取网络

    Fig.  3  The framework of appearance feature extractor network

    图  4  先验图像中的样本选择

    Fig.  4  Our training examples selection

    图  5  定性比较结果

    Fig.  5  Qualitative results comparison

    表  1  有效性对比实验

    Table  1  Ablation experiments results

    方法 ours_m ours_a Baseline FCN
    Mean $\cal{M} \uparrow$ 0.595 0.552 0.501 0.519
    $\cal{J}$ Recall $\cal{O} \uparrow$ 0.647 0.645 0.558 0.528
    Decay $\cal{D} \downarrow$ 0.010 −0.029 −0.046 0.059
    Mean $\cal{M} \uparrow$ 0.568 0.493 0.458 0.482
    $\cal{F}$ Recall $\cal{O} \uparrow$ 0.648 0.487 0.426 0.448
    Decay $\cal{D} \downarrow$ 0.063 −0.035 −0.025 0.054
    $\cal{T}$ Mean $\cal{M} \downarrow$ 0.689 0.721 0.679 0.829
    下载: 导出CSV

    表  2  定量实验结果

    Table  2  Quantitative experiments results

    方法 ours ours_n lmp msg fseg fst tis nlc cvos
    Mean $\cal{M} \uparrow$ 0.713 0.710 0.700 0.533 0.707 0.558 0.626 0.551 0.482
    $\cal{J}$ Recall $\cal{O} \uparrow$ 0.798 0.791 0.850 0.616 0.835 0.649 0.803 0.558 0.540
    Decay $\cal{D} \downarrow$ −0.036 −0.007 0.013 0.024 0.015 −0.000 0.071 0.126 0.105
    Mean $\cal{M} \uparrow$ 0.684 0.695 0.659 0.508 0.653 0.511 0.596 0.523 0.447
    $\cal{F}$ Recall $\cal{O} \uparrow$ 0.772 0.809 0.792 0.600 0.738 0.516 0.745 0.519 0.526
    Decay $\cal{D} \downarrow$ −0.009 0.004 0.025 0.051 0.018 0.029 0.064 0.114 0.117
    $\cal{T}$ Mean $\cal{M} \downarrow$ 0.534 0.589 0.572 0.301 0.328 0.366 0.336 0.425 0.250
    下载: 导出CSV
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出版历程
  • 收稿日期:  2019-04-10
  • 录用日期:  2019-07-30
  • 网络出版日期:  2022-01-26
  • 刊出日期:  2022-03-25

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