2022
DOI: 10.48550/arxiv.2206.00105
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Deep learning pipeline for image classification on mobile phones

Muhammad Muneeb,
Samuel F. Feng,
Andreas Henschel

Abstract: This article proposes and documents a machine-learning framework and tutorial for classifying images using mobile phones. Compared to computers, the performance of deep learning model performance degrades when deployed on a mobile phone and requires a systematic approach to find a model that performs optimally on both computers and mobile phones. By following the proposed pipeline, which consists of various computational tools, simple procedural recipes, and technical considerations, one can bring the power of… Show more

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“…The recurrent neural networks, known for their memory, which allow them to use past inputs to influence the current input and output, are used for time-series or sequential data such as language translation [45], natural language processing, voice recognition [46] and image captioning and classification [47].…”
Section: Recurrent Neural Networkmentioning
confidence: 99%
“…The recurrent neural networks, known for their memory, which allow them to use past inputs to influence the current input and output, are used for time-series or sequential data such as language translation [45], natural language processing, voice recognition [46] and image captioning and classification [47].…”
Section: Recurrent Neural Networkmentioning
confidence: 99%