Automated classification of stems and leaves of potted plants based on
point cloud data
- URL: http://arxiv.org/abs/2002.12536v1
- Date: Fri, 28 Feb 2020 04:15:38 GMT
- Title: Automated classification of stems and leaves of potted plants based on
point cloud data
- Authors: Zichu Liu, Qing Zhang, Pei Wang, Zhen Li, Huiru Wang
- Abstract summary: A classification method was proposed to classify the leaves and stems of potted plants automatically.
The leaf point training samples were automatically extracted by using the three-dimensional convex hull algorithm.
The two training sets were used to classify all the points into leaf points and stem points by utilizing the support vector machine (SVM) algorithm.
- Score: 21.085243796341743
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The accurate classification of plant organs is a key step in monitoring the
growing status and physiology of plants. A classification method was proposed
to classify the leaves and stems of potted plants automatically based on the
point cloud data of the plants, which is a nondestructive acquisition. The leaf
point training samples were automatically extracted by using the
three-dimensional convex hull algorithm, while stem point training samples were
extracted by using the point density of a two-dimensional projection. The two
training sets were used to classify all the points into leaf points and stem
points by utilizing the support vector machine (SVM) algorithm. The proposed
method was tested by using the point cloud data of three potted plants and
compared with two other methods, which showed that the proposed method can
classify leaf and stem points accurately and efficiently.
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