4.7 Article

A Computer-Vision-Based Approach for Nitrogen Content Estimation in Plant Leaves

Journal

AGRICULTURE-BASEL
Volume 11, Issue 8, Pages -

Publisher

MDPI
DOI: 10.3390/agriculture11080766

Keywords

nitrogen estimation; image processing; leaf contents; crop yield; color distance models

Categories

Funding

  1. Higher Education Commission, Pakistan [NRPU-7389]

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This study discusses the importance of nitrogen in crops and proposes a computer vision-based solution to help farmers measure nitrogen content in crops more conveniently and quickly. By capturing leaf images on a specially designed slate and extracting and analyzing them automatically, a green color value index is defined as a nitrogen indicator. Evaluation of different color distance models is presented to accurately capture color differences.
Nitrogen is an essential nutrient element required for optimum crop growth and yield. If a specific amount of nitrogen is not applied to crops, their yield is affected. Estimation of nitrogen level in crops is momentous to decide the nitrogen fertilization in crops. The amount of nitrogen in crops is measured through different techniques, including visual inspection of leaf color and texture and by laboratory analysis of plant leaves. Laboratory analysis-based techniques are more accurate than visual inspection, but they are costly, time-consuming, and require skilled laboratorian and precise equipment. Therefore, computer-based systems are required to estimate the amount of nitrogen in field crops. In this paper, a computer vision-based solution is introduced to solve this problem as well as to help farmers by providing an easier, cheaper, and faster approach for measuring nitrogen deficiency in crops. The system takes an image of the crop leaf as input and estimates the amount of nitrogen in it. The image is captured by placing the leaf on a specially designed slate that contains the reference green and yellow colors for that crop. The proposed algorithm automatically extracts the leaf from the image and computes its color similarity with the reference colors. In particular, we define a green color value (GCV) index from this analysis, which serves as a nitrogen indicator. We also present an evaluation of different color distance models to find a model able to accurately capture the color differences. The performance of the proposed system is evaluated on a Spinacia oleracea dataset. The results of the proposed system and laboratory analysis are highly correlated, which shows the effectiveness of the proposed system.

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