论文标题

颜色复杂性启用了图像中详尽的颜色点标识和空间图案测试

Color-complexity enabled exhaustive color-dots identification and spatial patterns testing in images

论文作者

Liao, Shuting, Liu, Li-Yu, Chen, Ting-An, Chen, Kuang-Yu, Hsieh, Fushing

论文摘要

首先详尽地识别出具有不同形状和大小不同的靶向颜色点,然后提取其多尺度的2D几何图案以渐进的方式测试空间均匀性。基于物理学的颜色理论,我们开发了一种新的颜色识别算法,该算法依赖于三种颜色协调的高度关联关系:RGB或HSV。如此高的关联在颜色图像的颜色复杂性低下,并且使详尽识别所有形状和尺寸的有针对性点的潜力。通过异质的阴影区域和照明条件,与流行的轮廓和OPENCV方法相比,我们的算法表现出可靠,实用和有效的。在所有已识别的颜色像素上,我们将颜色点形成具有形状和大小的单独连接的网络。我们将最小跨越树(MST)构造为各种大小尺寸的点填充物的空间几何形状。给定尺寸尺度,提取了观察到的MST中直接邻居之间距离的分布,因此在空间均匀度假设下进行了许多模拟MST。我们设计了一种新算法,用于基于涉及MST的所有分层聚类树测试2D空间均匀性。我们的发展是在通过精确农业中通过无人机模仿化学喷雾来获得的图像。

Targeted color-dots with varying shapes and sizes in images are first exhaustively identified, and then their multiscale 2D geometric patterns are extracted for testing spatial uniformness in a progressive fashion. Based on color theory in physics, we develop a new color-identification algorithm relying on highly associative relations among the three color-coordinates: RGB or HSV. Such high associations critically imply low color-complexity of a color image, and renders potentials of exhaustive identification of targeted color-dots of all shapes and sizes. Via heterogeneous shaded regions and lighting conditions, our algorithm is shown being robust, practical and efficient comparing with the popular Contour and OpenCV approaches. Upon all identified color-pixels, we form color-dots as individually connected networks with shapes and sizes. We construct minimum spanning trees (MST) as spatial geometries of dot-collectives of various size-scales. Given a size-scale, the distribution of distances between immediate neighbors in the observed MST is extracted, so do many simulated MSTs under the spatial uniformness assumption. We devise a new algorithm for testing 2D spatial uniformness based on a Hierarchical clustering tree upon all involving MSTs. Our developments are illustrated on images obtained by mimicking chemical spraying via drone in Precision Agriculture.

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