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Related Concept Videos

Classification of Illness01:17

Classification of Illness

The meaning of illness is individualized to each person who experiences an alteration in health. In contrast, disease is a medical term indicating a pathological change in the structure and function of the body or mind. It is a condition that has specific symptoms and boundaries.
An illness is a response to a disease in which the person's level of functioning is changed compared with a previous level. The general classification of illness includes acute and chronic.
Acute illness is severe and...

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LeafJ: An ImageJ Plugin for Semi-automated Leaf Shape Measurement
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An Automatic-Segmentation- and Hyper-Parameter-Optimization-Based Artificial Rabbits Algorithm for Leaf Disease

Ihtiram Raza Khan1, M Siva Sangari2, Piyush Kumar Shukla3

  • 1Department of Computer Science, Jamia Hamdard, Delhi 110062, India.

Biomimetics (Basel, Switzerland)
|September 27, 2023
PubMed
Summary
This summary is machine-generated.

A novel deep learning approach, Automatic Segmentation and Hyper Parameter Optimization Artificial Rabbits Algorithm (AS-HPOARA), accurately classifies plant leaf diseases. This method enhances agricultural yield by enabling early detection and minimizing crop loss.

Keywords:
Artificial Rabbits AlgorithmAutomatic SegmentationHyper Parameter Optimizationleaf disease classificationsynthetic images

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Area of Science:

  • Agricultural Science
  • Computer Science
  • Artificial Intelligence

Background:

  • Plant diseases pose significant threats to agriculture, causing substantial economic losses.
  • Early detection and classification of plant diseases are crucial for minimizing spread and improving crop yields.
  • Deep learning models require large datasets for accurate image classification, often facing overfitting challenges.

Purpose of the Study:

  • To develop an advanced deep learning model for improved plant leaf disease classification.
  • To address overfitting issues and enhance classification accuracy in plant disease detection.
  • To introduce the Automatic Segmentation and Hyper Parameter Optimization Artificial Rabbits Algorithm (AS-HPOARA) for agricultural applications.

Main Methods:

  • Utilized the Plant Village dataset for evaluating the AS-HPOARA approach.
  • Applied Z-score normalization and three augmentation techniques (rotation, scaling, translation) to balance and preprocess images.
  • Employed a modified UNet for image segmentation and HPO-based ARA for classification, including hyperparameter tuning.

Main Results:

  • The AS-HPOARA model achieved a high classification accuracy of 99.7% for ten plant disease classes.
  • Image augmentation techniques effectively reduced overfitting and improved classification accuracy.
  • The proposed method demonstrated superior performance compared to existing models like CGAN-DenseNet121 and RAHC_GAN.

Conclusions:

  • AS-HPOARA significantly enhances plant leaf disease classification accuracy.
  • The developed algorithm effectively mitigates overfitting and improves model generalization.
  • This approach holds potential for early disease detection, contributing to agricultural sustainability and economic stability.