4.7 Article

An automatic approach for detecting seedlings per hill of machine-transplanted hybrid rice utilizing machine vision

Journal

COMPUTERS AND ELECTRONICS IN AGRICULTURE
Volume 185, Issue -, Pages -

Publisher

ELSEVIER SCI LTD
DOI: 10.1016/j.compag.2021.106178

Keywords

Hybrid rice; Machine-transplanted seedling; Seedlings per hill; Image processing; Automatic detection

Funding

  1. National Key Research and Development Program of China [2017YFD0700802]
  2. National Natural Science Foundation of China [51675188]
  3. Earmarked Fund for Modern Agroindustry Technology Research System [CARS-01-43]

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A study proposed an automatic approach based on machine vision technology for detecting seedlings per hill in hybrid rice cultivation. The Lab color model proved to be the most effective in separating seedlings from the background in rice field images, with an overall detection accuracy of up to 93.5%.
The cultivation of hybrid rice requires lower investment cost and fewer transplanted seedlings per hill to improve the grain yield by increasing the productive tillers. Therefore, for the precise transplanting of hybrid rice, it is crucial to accurately recognize machine-transplanted seedlings and detect seedlings per hill. In this study, an automatic approach based on machine vision technology was proposed for detecting seedlings per hill. For the problem of rice field background interference on machine-transplanted seedling extraction, rice seedling and paddy field pixels were obtained from rice field images to generate two patches. The distribution characteristics of colour component values of these two patches under different colour models (i.e., RGB, YCrCb, HSV, Lab, HLS and LUV) were analysed by adopting exploratory factor analysis. These analysis results showed that the Lab (Lfactor of brightness, a-content of red or green, and b-content of yellow or blue) colour model outperformed other models in separating seedlings from the background. The preferred Lab colour model along with Otsu's method were used to extract rice seedling information, and the skeleton of the seedling hill was extracted using the thinning algorithm to effectively characterize the morphological structure of single seedling hill. An algorithm for detecting endpoints of skeletonized seedling hills was proposed to represent leaf tips of seedlings as endpoints, and the relationship between ground truth counts and automatic counts of endpoints was positive with R2 and root mean square error (RMSE) of 0.9105 and 0.7437, respectively. Combining the number of endpoints with the number of skeletons, a mathematical model was developed and used for detecting seedlings per hill of machine-transplanted hybrid rice. The overall detection accuracy of seedlings per hill of machine-transplanted hybrid rice was up to 93.5%. The processing time for detecting single seedling hill image was less than 50 ms. These results show that the proposed approach allowed for the effective, reliable and fast detection of seedlings per hill, which provides technical assistance for further precise adjustments of the machinetransplanted performance of hybrid rice.

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