基于精确背景和突出路径源选择的实时突出物体检测

Wen-Kai Tsai, Hsin-Chih Wang
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摘要

边界先验法和连接先验法是检测图像突出物体的常用方法。它们通常要解决两个问题:1)如果突出对象触及图像边界,则对象的突出性将失效;2)精确的像素或超像素计算需要耗费大量时间。本研究提出了一种分块算法,以减少计算时间消耗并抑制突出物体触及图像边界。该算法包括四个阶段。第一阶段,采用自适应微观和宏观预测技术分析每个区块,生成显著性预测图。第二阶段从显著性预测图中选择背景和显著源。背景源是从图像边界提取的低显著性值。突出源被精确定位在突出对象区域。第三阶段,利用背景源和突出源生成基于最小障碍距离的背景路径和突出路径。通过融合背景路径和突出路径,得到分块初始突出图。第四阶段,利用主要颜色建模技术和视觉焦点先验来完成对突出图的细化,以改善区块效果。实验结果表明,在三个数据集测试中,所提出的方法在其他算法中取得了最好的测试结果,并在 MSRA-10 K 数据集上实现了每秒 284 帧(FPS)的速度性能。我们的方法至少提高了 29.09% 的速度,并能在轻量级嵌入式平台上实时执行。
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Real-time salient object detection based on accuracy background and salient path source selection

Boundary and connectivity prior are common methods for detecting the image salient object. They often address two problems: 1) if the salient object touches the image boundary, the saliency of the object will fail, and 2) accurate pixel-wise or superpixel-wise computation needs high time expenditure. This study proposes a block-wise algorithm to reduce calculation time expenditure and suppress the salient objects touching the image boundary. The algorithm consists of four stages. In the first stage, each block is analyzed by an adaptive micro and macro prediction technique to generate a saliency prediction map. The second stage selects background and salient sources from the saliency prediction map. Background sources are extracted from the image boundary with low saliency value. Salient sources are accurately positioned in the region of salient objects. In the third stage, the background and salient sources are used to generate the background path and salient path based on minimum barrier distance. The block-wise initial saliency map is obtained by fusing the background and salient paths. In the fourth stage, major-color modeling technology and visual focus priors are used to complete the refinement of the saliency map to improve the block effect. In the experimental result, the proposed method produced the best test results among other algorithms in three dataset tests and achieved 284 frames per second (FPS) speed performance on the MSRA-10 K dataset. Our method shows at least 29.09% speed improvement and executes in real-time on a lightweight embedded platform.

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