参考驱动自适应轮廓保持滤波的空间变化区域开口

G. Franchi, J. Angulo
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引用次数: 2

摘要

经典的自适应数学形态学是基于算子的,算子局部地使结构元素适应图像的属性。连接的形态学算子作用于图像的平面区域的水平,使得只有平面区域被过滤掉,因此物体边缘被保留。区域开放(如:区域关闭(Area closing)是最有用的连接操作之一,它可以过滤掉明亮的信号。黑暗)地区。它本质上涉及到结构单元的形状的适应参数化的面积。本文根据两种空间变异范式,引入了参考驱动自适应区域开放的概念。首先,区域参数由参考图像局部自适应;该方法用于处理深度图像,其中深度图像用于适应尺度大小处理。第二,自对偶区域打开,其中参考图像根据图像和参考之间的关系确定区域滤波器是打开还是关闭。它的自然应用领域是视频序列。
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Spatially-Variant Area Openings for Reference-Driven Adaptive Contour Preserving Filtering
Classical adaptive mathematical morphology is based on operators which locally adapt the structuring elements to the image properties. Connected morphological operators act on the level of the flat zones of an image, such that only flat zones are filtered out, and hence the object edges are preserved. Area opening (resp. area closing) is one of the most useful connected operators, which filters out the bright (resp. dark) regions. It intrinsically involves the adaptation of the shape of the structuring element parameterized by its area. In this paper, we introduce the notion of reference-driven adaptive area opening according to two spatially-variant paradigms. First, the parameter of area is locally adapted by the reference image. This approach is applied to processing intensity depth images where the depth image is used to adapt the scale-size processing. Second, a self-dual area opening, where the reference image determines if the area filter is an opening or a closing with respect to the relationship between the image and the reference. Its natural application domain are the video sequences.
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