Abstract

Agricultural greenhouse plant images with complicated scenes are difficult to precisely manually label. The appearance of leaf disease spots and mosses increases the difficulty in plant segmentation. Considering these problems, this paper proposed a statistical image segmentation algorithm MSBS-LDA (Mean-shift Bandwidths Searching Latent Dirichlet Allocation), which can perform unsupervised segmentation of greenhouse plants. The main idea of the algorithm is to take advantage of the language model LDA (Latent Dirichlet Allocation) to deal with image segmentation based on the design of spatial documents. The maximum points of probability density function in image space are mapped as documents and Mean-shift is utilized to fulfill the word-document assignment. The proportion of the first major word in word frequency statistics determines the coordinate space bandwidth, and the spatial LDA segmentation procedure iteratively searches for optimal color space bandwidth in the light of the LUV distances between classes. In view of the fruits in plant segmentation result and the ever-changing illumination condition in greenhouses, an improved leaf segmentation method based on watershed is proposed to further segment the leaves. Experiment results show that the proposed methods can segment greenhouse plants and leaves in an unsupervised way and obtain a high segmentation accuracy together with an effective extraction of the fruit part.

Highlights

  • Plant phenotype analysis based on image processing has been a popular application field of agricultural computer vision in recent years

  • We propose a modified statistical model of Latent Dirichlet Allocation (LDA), namely MSBS-LDA, to segment greenhouse tomato plants in an unsupervised way, and leaf segmentation is carried out subsequently

  • The diversity of visual vocabulary is guaranteed by constructing visual words, which can improve the ability of LDA to describe image details

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Summary

Introduction

Plant phenotype analysis based on image processing has been a popular application field of agricultural computer vision in recent years. High-throughput, accurate and rapid imaging technique and processing method for plant phenotypic analysis will monitor the growth of plants, and lay a visual foundation for the optimization of an intelligent greenhouse environment control system. For the analysis of greenhouse plants, it is an important process to get enough. How to cite this article Wang and Xu (2018), Unsupervised segmentation of greenhouse plant images based on modified Latent Dirichlet Allocation. In this regard, a well-segmented result of the plant and leaves can help in labelling the image quickly and accurately

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