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Deep Learning-Based Plant Leaf Disease Detection Using Scaled Immutable Feature Selection Using Adaptive Deep Convolutional Recurrent Neural Network

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Abstract

Agriculture provides food and raw materials that are the bedrock of all nations. It is very essential to humans as a source of food. Plant diseases are major factors that affect the yield and quality of the plant. Digital image processing can determine plant diseases. Prediction of plant diseases has been implicated in the early stages of the agricultural sector. Thus, existing image process techniques employed plant disease features manually which is inefficient and results in poor recognition accuracy. This is often time-consuming and can result in poor precision and reproducibility. To tackle this issue, we introduce a proposed Hyper-Spectral Immutable Scaled Feature Selection (HSISFS) using Adaptive Deep Convolutional Recurrent Neural Network (ADCRNN) for leaf disease identification. It starts by pre-processing and scaling the region of plant leaf features to normalize the image pixel by reducing the noisy image based on Sampling Subset Feature Filtering (S2F2). Then, Ada Boosting Region-Based Segmentation (ABRS) technique employs for segregating leaf region parts. Based on the segmentation, the image analyzes the nearest maximum feature weight using Spider Optimization-Based Maximum Features Weight (SO-MFW). After that, the HSISFS method selects the plant leaf disease’s finest features. Finally, the ADCRNN algorithm with softmax logical activate function categorizes the leaf disease based on the finest features. Thus, the proposed produced high classification and detection accuracy, precision, recall, and F-measure performance, with a low false rate. The classification accuracy performance results are superior than the existing methods.

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Data availability

The dataset generated and analyzed during the current study are available from the corresponding author on reasonable request.

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Correspondence to S. Jayashree.

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This article is part of the topical collection “Advances in Computational Approaches for Image Processing, Wireless Networks, Cloud Applications and Network Security” guest edited by P. Raviraj, Maode Ma and Roopashree H R.

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Jayashree, S., Sumalatha, V. Deep Learning-Based Plant Leaf Disease Detection Using Scaled Immutable Feature Selection Using Adaptive Deep Convolutional Recurrent Neural Network. SN COMPUT. SCI. 4, 592 (2023). https://doi.org/10.1007/s42979-023-01908-9

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