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Deep Learning for Plant Identification and Disease Classification from Leaf Images: Multi-prediction Approaches

Published: 24 February 2024 Publication History

Abstract

Deep learning (DL) plays an important role in modern agriculture, especially in plant pathology using leaf images where convolutional neural networks (CNN) are attracting a lot of attention. While numerous reviews have explored the applications of DL within this research domain, there remains a notable absence of an empirical study to offer insightful comparisons due to the employment of varied datasets in the evaluation. Furthermore, a majority of these approaches tend to address the problem as a singular prediction task, overlooking the multifaceted nature of predicting various aspects of plant species and disease types. Lastly, there is an evident need for a more profound consideration of the semantic relationships that underlie plant species and disease types. In this article, we start our study by surveying current DL approaches for plant identification and disease classification. We categorise the approaches into multi-model, multi-label, multi-output, and multi-task, in which different backbone CNNs can be employed. Furthermore, based on the survey of existing approaches in plant pathology and the study of available approaches in machine learning, we propose a new model named Generalised Stacking Multi-output CNN (GSMo-CNN). To investigate the effectiveness of different backbone CNNs and learning approaches, we conduct an intensive experiment on three benchmark datasets Plant Village, Plant Leaves, and PlantDoc. The experimental results demonstrate that InceptionV3 can be a good choice for a backbone CNN as its performance is better than AlexNet, VGG16, ResNet101, EfficientNet, MobileNet, and a custom CNN developed by us. Interestingly, there is empirical evidence to support the hypothesis that using a single model for both tasks can be comparable or better than using two models, one for each task. Finally, we show that the proposed GSMo-CNN achieves state-of-the-art performance on three benchmark datasets.

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  1. Deep Learning for Plant Identification and Disease Classification from Leaf Images: Multi-prediction Approaches

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      cover image ACM Computing Surveys
      ACM Computing Surveys  Volume 56, Issue 6
      June 2024
      963 pages
      EISSN:1557-7341
      DOI:10.1145/3613600
      Issue’s Table of Contents

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      Association for Computing Machinery

      New York, NY, United States

      Publication History

      Published: 24 February 2024
      Online AM: 08 January 2024
      Accepted: 21 December 2023
      Revised: 14 December 2023
      Received: 04 November 2022
      Published in CSUR Volume 56, Issue 6

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      Author Tags

      1. Deep learning
      2. convolutional neural networks
      3. multi-prediction
      4. plant identification
      5. leaf disease classification
      6. plant pathology

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