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首页> 外文期刊>Pattern Analysis and Machine Intelligence, IEEE Transactions on >Object Segmentation Ensuring Consistency Across Multi-Viewpoint Images
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Object Segmentation Ensuring Consistency Across Multi-Viewpoint Images

机译:对象分割,确保多视点图像之间的一致性

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We present a hybrid approach that segments an object by using both color and depth information obtained from views captured from a low-cost RGBD camera and sparsely-located color cameras. Our system begins with generating dense depth information of each target image by using Structure from Motion and Joint Bilateral Upsampling. We formulate the multi-view object segmentation as the Markov Random Field energy optimization on the graph constructed from the superpixels. To ensure inter-view consistency of the segmentation results between color images that have too few color features, our local mapping method generates dense inter-view geometric correspondences by using the dense depth images. Finally, the pixel-based optimization step refines the boundaries of the results obtained from the superpixel-based binary segmentation. We evaluate the validity of our method under various capture conditions such as numbers of views, rotations, and distances between cameras. We compared our method with the state-of-the-art methods that use the standard multi-view datasets. The comparison verified that the proposed method works very efficiently especially in a sparse wide-baseline capture environment.
机译:我们提出了一种混合方法,该方法通过使用从低成本RGBD相机和稀疏定位的彩色相机捕获的视图中获得的颜色和深度信息来分割对象。我们的系统首先通过使用“运动”和“联合双边上采样”中的“结构”生成每个目标图像的密集深度信息。我们将多视图对象分割公式化为由超像素构造的图上的马尔可夫随机场能量优化。为了确保颜色特征太少的彩色图像之间的分割结果在视图间具有一致性,我们的局部映射方法通过使用密集深度图像生成密集的视图间几何对应关系。最后,基于像素的优化步骤优化了从基于超像素的二进制分割中获得的结果的边界。我们在各种拍摄条件下评估我们方法的有效性,例如视角数量,旋转角度和相机之间的距离。我们将我们的方法与使用标准多视图数据集的最新方法进行了比较。比较结果表明,该方法在稀疏的宽基线捕获环境中非常有效。

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