Abstract

The identification of plant disease is an imperative part of crop monitoring systems. Computer vision and deep learning (DL) techniques have been proven to be state-of-the-art to address various agricultural problems. This research performed the complex tasks of localization and classification of the disease in plant leaves. In this regard, three DL meta-architectures including the Single Shot MultiBox Detector (SSD), Faster Region-based Convolutional Neural Network (RCNN), and Region-based Fully Convolutional Networks (RFCN) were applied by using the TensorFlow object detection framework. All the DL models were trained/tested on a controlled environment dataset to recognize the disease in plant species. Moreover, an improvement in the mean average precision of the best-obtained deep learning architecture was attempted through different state-of-the-art deep learning optimizers. The SSD model trained with an Adam optimizer exhibited the highest mean average precision (mAP) of 73.07%. The successful identification of 26 different types of defected and 12 types of healthy leaves in a single framework proved the novelty of the work. In the future, the proposed detection methodology can also be adopted for other agricultural applications. Moreover, the generated weights can be reused for future real-time detection of plant disease in a controlled/uncontrolled environment.

Highlights

  • IntroductionLeaves play a vital role to provide information about the amount and nature of horticultural yield

  • In agricultural crops, leaves play a vital role to provide information about the amount and nature of horticultural yield

  • Thearchitectures score was considered between 0The andmAP

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Summary

Introduction

Leaves play a vital role to provide information about the amount and nature of horticultural yield. Apart from that, plant or leaf disease is a global threat to the growth of several agricultural products and a source of economic losses [1]. The failure to diagnose infections/bacteria/virus in plants leads subsequently to insufficient pesticide/fungicide use. Plant diseases have been largely considered in the scientific community, with a focus on the biological features of diseases. The visual inspections by experts and biological review are usually carried out through plant diagnosis when required. This method, is typically time-consuming and cost ineffective. To address these issues, it is necessary to detect plant diseases by advanced and intelligent techniques

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