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A Video Salient Object Detection Model Guided by Spatio-Temporal Prior

机译:时空先验指导的视频显着目标检测模型

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Neurobiology researches suggest that the motion information attracts more attention of human visual system than other low-level features such as brightness, color and texture. Consequently, video saliency detection methods not only consider the spatial saliency caused by the underlying features of images, but also the motion information in temporal domain. In this study, we proposes a model of video salient object detection based on a two-pathway framework that the spatio-temporal contrast guides the search for salient targets. Firstly, along the non-selective pathway, which is computed with the intra-frame and inter-frame maps of the color contrast and motion contrast, combining with the previous saliency map, to represent the prior information of the possible target locations. In contrast, the low-level features such as brightness, color and motion features are extracted in the selective pathway to search target accurately. Finally, the Bayesian inference is used to further obtain the optimal results. Experimental results show that our algorithm improves the performance of salient object detection on video compared to the representative method of Contour Guided Visual Search.
机译:神经生物学研究表明,运动信息比亮度,颜色和纹理等其他低级特征吸引了更多人眼视觉系统的注意。因此,视频显着性检测方法不仅考虑了图像的潜在特征引起的空间显着性,而且还考虑了时域中的运动信息。在这项研究中,我们提出了一种基于两条路径框架的视频显着目标检测模型,该框架以时空对比指导寻找显着目标。首先,沿着非选择性路径,该路径是使用颜色对比和运动对比的帧内和帧间映射与先前的显着性映射相结合来计算的,以表示可能目标位置的先验信息。相反,在选择性路径中提取了诸如亮度,颜色和运动特征之类的低级特征,以准确地搜索目标。最后,贝叶斯推断被用来进一步获得最佳结果。实验结果表明,与轮廓引导视觉搜索的代表性方法相比,我们的算法提高了视频中显着目标检测的性能。

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