Color-complexity enabled exhaustive color-dots identification and
spatial patterns testing in images
- URL: http://arxiv.org/abs/2007.14485v1
- Date: Tue, 28 Jul 2020 21:06:12 GMT
- Title: Color-complexity enabled exhaustive color-dots identification and
spatial patterns testing in images
- Authors: Shuting Liao, Li-Yu Liu, Ting-An Chen, Kuang-Yu Chen and Fushing Hsieh
- Abstract summary: We develop a new color-identification algorithm based on highly associative relations among the three color-coordinates: RGB or HSV.
Our developments are illustrated in images obtained by mimicking chemical spraying via drone in Precision Agriculture.
- Score: 0.6299766708197881
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: 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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