Real-time Plant Health Assessment Via Implementing Cloud-based Scalable
Transfer Learning On AWS DeepLens
- URL: http://arxiv.org/abs/2009.04110v2
- Date: Thu, 10 Sep 2020 16:58:20 GMT
- Title: Real-time Plant Health Assessment Via Implementing Cloud-based Scalable
Transfer Learning On AWS DeepLens
- Authors: Asim Khan, Umair Nawaz, Anwaar Ulhaq and Randall W. Robinson
- Abstract summary: We propose a machine learning approach to detect and classify plant leaf disease.
We use scalable transfer learning on AWS SageMaker and importing it on AWS DeepLens for real-time practical usability.
Our experiments on extensive image data set of healthy and unhealthy leaves of fruits and vegetables showed an accuracy of 98.78% with a real-time diagnosis of plant leaves diseases.
- Score: 0.8714677279673736
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: In the Agriculture sector, control of plant leaf diseases is crucial as it
influences the quality and production of plant species with an impact on the
economy of any country. Therefore, automated identification and classification
of plant leaf disease at an early stage is essential to reduce economic loss
and to conserve the specific species. Previously, to detect and classify plant
leaf disease, various Machine Learning models have been proposed; however, they
lack usability due to hardware incompatibility, limited scalability and
inefficiency in practical usage. Our proposed DeepLens Classification and
Detection Model (DCDM) approach deal with such limitations by introducing
automated detection and classification of the leaf diseases in fruits (apple,
grapes, peach and strawberry) and vegetables (potato and tomato) via scalable
transfer learning on AWS SageMaker and importing it on AWS DeepLens for
real-time practical usability. Cloud integration provides scalability and
ubiquitous access to our approach. Our experiments on extensive image data set
of healthy and unhealthy leaves of fruits and vegetables showed an accuracy of
98.78% with a real-time diagnosis of plant leaves diseases. We used forty
thousand images for the training of deep learning model and then evaluated it
on ten thousand images. The process of testing an image for disease diagnosis
and classification using AWS DeepLens on average took 0.349s, providing disease
information to the user in less than a second.
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