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An Instance-based deep transfer learning approach for Resource-Constrained Environments

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dc.contributor.author Kimutai, Gibson
dc.contributor.author Förster, Anna
dc.date.accessioned 2023-05-15T08:29:18Z
dc.date.available 2023-05-15T08:29:18Z
dc.date.issued 2022
dc.identifier.uri http://ir.mu.ac.ke:8080/jspui/handle/123456789/7551
dc.description.abstract Although Deep Learning (DL) is revolutionising practices across fields, it requires a large amount of data and computing resources, requires considerable training time, and is thus expensive. This study proposes a transfer learning approach by adopting a sim- plified version of a standard Convolution Neural Network (CNN), which is successful in another domain. We explored three transfer learning approaches: freezing all layers except the first and the last layer of the CNN model, which we had modified, freezing the first layer, updating the weights of the rest of the layers, and fine- tuning the entire network. Furthermore, we trained a DL model from scratch to act as a baseline. We performed the experiments on the Edge Impulse platform. We evaluated the models based on plant-village, tea diseases and land use datasets. Fine-tuning and training the whole network produced the best precision, accuracy, recall, f-measure and sensitivity across the datasets. All three trans- fer learning schemes significantly reduced the training by more than half. Further, we deployed the fine-tuned model in detect- ing diseases in tea two months after the idea’s conception, and it showed a good correlation with the experts’ decisions. The evalu- ation results showed that it is viable to perform transfer learning among domains to accelerate solutions deployments. Additionally, Edge Impulse is ideal in resource-constrained environments, es- pecially in developing countries lacking computing resources and expertise to train DL models from scratch. This insight can propel the development and rollout of various applications addressing the Sustainable Development Goals targeted at zero hunger and no poverty, among other goals. en_US
dc.language.iso en en_US
dc.publisher NET4us ’ en_US
dc.subject Machine learning en_US
dc.subject transfer learning, en_US
dc.subject Convolution neural network en_US
dc.subject Edge Impulses en_US
dc.title An Instance-based deep transfer learning approach for Resource-Constrained Environments en_US
dc.type Article en_US


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