Primary Video Object Segmentation via Complementary CNNs and Neighborhood Reversible Flow

Jia Li, Anlin Zheng, Xiaowu Chen, Bin Zhou
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引用次数: 23

Abstract

This paper proposes a novel approach for segmenting primary video objects by using Complementary Convolutional Neural Networks (CCNN) and neighborhood reversible flow. The proposed approach first pre-trains CCNN on massive images with manually annotated salient objects in an end-to-end manner, and the trained CCNN has two separate branches that simultaneously handle two complementary tasks, i.e., foregroundness and backgroundness estimation. By applying CCNN on each video frame, the spatial foregroundness and backgroundness maps can be initialized, which are then propagated between various frames so as to segment primary video objects and suppress distractors. To enforce efficient temporal propagation, we divide each frame into superpixels and construct neighborhood reversible flow that reflects the most reliable temporal correspondences between superpixels in far-away frames. Within such flow, the initialized foregroundness and backgroundness can be efficiently and accurately propagated along the temporal axis so that primary video objects gradually pop-out and distractors are well suppressed. Extensive experimental results on three video datasets show that the proposed approach achieves impressive performance in comparisons with 18 state-of-the-art models.
基于互补cnn和邻域可逆流的主视频目标分割
提出了一种基于互补卷积神经网络(CCNN)和邻域可逆流的主视频目标分割新方法。该方法首先以端到端的方式在大量图像上对CCNN进行预训练,训练后的CCNN有两个独立的分支,同时处理两个互补的任务,即前景估计和背景估计。通过在每一帧视频上应用CCNN,可以初始化空间前景和背景映射,然后在各帧之间传播,从而分割主视频对象并抑制干扰物。为了加强有效的时间传播,我们将每帧划分为超像素,并构建反映远处帧中超像素之间最可靠的时间对应的邻域可逆流。在这样的流中,初始化的前景和背景可以沿着时间轴高效、准确地传播,使得初级视频对象逐渐弹出,干扰物被很好地抑制。在三个视频数据集上的大量实验结果表明,与18个最先进的模型相比,该方法取得了令人印象深刻的性能。
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