Plant Species Classification Using Transfer Learning by Pretrained
Classifier VGG-19
- URL: http://arxiv.org/abs/2209.03076v1
- Date: Wed, 7 Sep 2022 11:28:50 GMT
- Title: Plant Species Classification Using Transfer Learning by Pretrained
Classifier VGG-19
- Authors: Thiru Siddharth, Bhupendra Singh Kirar, Dheeraj Kumar Agrawal
- Abstract summary: This paper describes a method for dissecting color images of Swedish leaves and identifying plant species.
To achieve higher accuracy, the task is completed using transfer learning with the help of pre-trained classifier VGG-19.
The model obtains knowledge connected to aspects of the Swedish leaf dataset, which contains fifteen tree classes, and aids in predicting the proper class of an unknown plant with an accuracy of 99.70%.
- Score: 1.933681537640272
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Deep learning is currently the most important branch of machine learning,
with applications in speech recognition, computer vision, image classification,
and medical imaging analysis. Plant recognition is one of the areas where image
classification can be used to identify plant species through their leaves.
Botanists devote a significant amount of time to recognizing plant species by
personally inspecting. This paper describes a method for dissecting color
images of Swedish leaves and identifying plant species. To achieve higher
accuracy, the task is completed using transfer learning with the help of
pre-trained classifier VGG-19. The four primary processes of classification are
image preprocessing, image augmentation, feature extraction, and recognition,
which are performed as part of the overall model evaluation. The VGG-19
classifier grasps the characteristics of leaves by employing pre-defined hidden
layers such as convolutional layers, max pooling layers, and fully connected
layers, and finally uses the soft-max layer to generate a feature
representation for all plant classes. The model obtains knowledge connected to
aspects of the Swedish leaf dataset, which contains fifteen tree classes, and
aids in predicting the proper class of an unknown plant with an accuracy of
99.70% which is higher than previous research works reported.
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