Abstract

Precision agriculture is the process that uses information and communication technology for farming and cultivation to improve overall productivity, efficient utilization of resources. Soil prediction is one of the primary phases in precision agriculture, resulting in good quality crops. In general, farmers perform the soil prediction manually. However, the efficiency of soil prediction may be enhanced by the use of current digital technologies. One effective way to automate soil prediction is image processing techniques in which soil images may be analyzed to determine the soil. This paper presents an efficient image analysis technique to predict the soil. For the same, a robust feature selection technique has been incorporated in the image analysis of soil images. The developed feature selection technique uses a new oscillating spider monkey optimization algorithm (OSMO) for the selection of features that are relevant and non-redundant. The new oscillating spider monkey optimization algorithm uses an oscillating perturbation rate to increase its precision and convergence behavior. A set of standard benchmark functions was deployed to visualize the performance of the new optimization technique (OSMO), and results were compared based on mean and standard deviation. Furthermore, the soil prediction approach is validated on a soil dataset, having seven categories. The proposed feature selection method selects the 41% relevant features, which provide the highest accuracy of 82.25% with 2.85% increase.

Highlights

  • Worldwide, agriculture is one of the significant sources of food and income

  • Local Leader Phase (LLP): This phase updates the location (Xij) of each member using the learning of the LL (XLjk) and members of the local group by Eq (3), based on a probability pr that is known as perturbation rate

  • EXPERIMENTAL RESULTS The performance of the oscillating spider monkey optimization (SMO)-based feature selection algorithm for the prediction of soil images has been conducted in two phases

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Summary

INTRODUCTION

Agriculture is one of the significant sources of food and income. The economy of various countries highly depends on the outcome of agriculture. The statistical techniques extract different sizes, shapes, and structural features from the soil images further supplied to one of the classifiers These methods do not generally perform well due to the complexity of the texture of an image. Local Leader Phase (LLP): This phase updates the location (Xij) of each member using the learning of the LL (XLjk) and members of the local group by Eq (3), based on a probability pr that is known as perturbation rate. This position is only updated if a new solution has higher fitness in comparison to the existing solution. Each phase of the proposed methodology is described in the upcoming subsections

FEATURE EXTRACTION
OSCILLATING SMO BASED FEATURE SELECTION
SOIL IMAGE CLASSIFICATION
EXPERIMENTAL RESULTS
RESULTS OF OSCILLATING SMO

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