Crop Disease Classification using Support Vector Machines with Green
Chromatic Coordinate (GCC) and Attention based feature extraction for IoT
based Smart Agricultural Applications
- URL: http://arxiv.org/abs/2311.00429v2
- Date: Mon, 6 Nov 2023 09:58:25 GMT
- Title: Crop Disease Classification using Support Vector Machines with Green
Chromatic Coordinate (GCC) and Attention based feature extraction for IoT
based Smart Agricultural Applications
- Authors: Shashwat Jha, Vishvaditya Luhach, Gauri Shanker Gupta, Beependra Singh
- Abstract summary: Plant diseases can negatively affect leaves during agricultural cultivation, resulting in significant losses in crop output and economic value.
Various machine learning (ML) as well as deep learning (DL) algorithms have been created & studied for the identification of plant disease detection.
This article presents a novel classification method that builds on prior work by utilising attention-based feature extraction, RGB channel-based chromatic analysis, Support Vector Machines (SVM) for improved performance.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Crops hold paramount significance as they serve as the primary provider of
energy, nutrition, and medicinal benefits for the human population. Plant
diseases, however, can negatively affect leaves during agricultural
cultivation, resulting in significant losses in crop output and economic value.
Therefore, it is crucial for farmers to identify crop diseases. However, this
method frequently necessitates hard work, a lot of planning, and in-depth
familiarity with plant pathogens. Given these numerous obstacles, it is
essential to provide solutions that can easily interface with mobile and IoT
devices so that our farmers can guarantee the best possible crop development.
Various machine learning (ML) as well as deep learning (DL) algorithms have
been created & studied for the identification of plant disease detection,
yielding substantial and promising results. This article presents a novel
classification method that builds on prior work by utilising attention-based
feature extraction, RGB channel-based chromatic analysis, Support Vector
Machines (SVM) for improved performance, and the ability to integrate with
mobile applications and IoT devices after quantization of information. Several
disease classification algorithms were compared with the suggested model, and
it was discovered that, in terms of accuracy, Vision Transformer-based feature
extraction and additional Green Chromatic Coordinate feature with SVM
classification achieved an accuracy of (GCCViT-SVM) - 99.69%, whereas after
quantization for IoT device integration achieved an accuracy of - 97.41% while
almost reducing 4x in size. Our findings have profound implications because
they have the potential to transform how farmers identify crop illnesses with
precise and fast information, thereby preserving agricultural output and
ensuring food security.
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