Abstract

Proper plant leaf disease (PLD) detection is challenging in complex backgrounds and under different capture conditions. For this reason, initially, modified adaptive centroid-based segmentation (ACS) is used to trace the proper region of interest (ROI). Automatic initialization of the number of clusters (K) using modified ACS before recognition increases tracing ROI’s scalability even for symmetrical features in various plants. Besides, convolutional neural network (CNN)-based PLD recognition models achieve adequate accuracy to some extent. However, memory requirements (large-scaled parameters) and the high computational cost of CNN-based PLD models are burning issues for the memory restricted mobile and IoT-based devices. Therefore, after tracing ROIs, three proposed depth-wise separable convolutional PLD (DSCPLD) models, such as segmented modified DSCPLD (S-modified MobileNet), segmented reduced DSCPLD (S-reduced MobileNet), and segmented extended DSCPLD (S-extended MobileNet), are utilized to represent the constructive trade-off among accuracy, model size, and computational latency. Moreover, we have compared our proposed DSCPLD recognition models with state-of-the-art models, such as MobileNet, VGG16, VGG19, and AlexNet. Among segmented-based DSCPLD models, S-modified MobileNet achieves the best accuracy of 99.55% and F1-sore of 97.07%. Besides, we have simulated our DSCPLD models using both full plant leaf images and segmented plant leaf images and conclude that, after using modified ACS, all models increase their accuracy and F1-score. Furthermore, a new plant leaf dataset containing 6580 images of eight plants was used to experiment with several depth-wise separable convolution models.

Highlights

  • Plant disease is one of the crucial reasons for food insecurity all over the world

  • We introduce a segmentation technique called adaptive centroid-based segmentation (ACS) that traces the proper regions of interest (ROIs) under different circumstances, such as images with shading, images behind objects, and shrunk images overlapped with other plant leaves, in Reference [23]

  • As in the segmentation phase, noises are removed, only ROI with symptoms is applied to our depth-wise separable convolutional plant leaf disease (DSCPLD) recognition models

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Summary

Introduction

Plant disease is one of the crucial reasons for food insecurity all over the world. It reduces the quantity of plant production and the quality of plants [1]. For this reason, early detection and protective measures of various plant diseases are a significant part of plant monitoring in the agro-industry. For early detection of plant diseases, it is essential to detect the symptoms from the plant part. This monitoring is vital in plant diagnosis. In our depth-wise separable convolutional plant leaf disease (DSCPLD) recognition framework, we consider the detection of plant diseases which spreads through young leaves

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