Development of an on Premise Indonesian Handwriting Recognition Backend System Using Open Source Deep Learning Solution for Mobile User

Masasi, Gianino and Purnama, James and Galinium, Maulahikmah (2019) Development of an on Premise Indonesian Handwriting Recognition Backend System Using Open Source Deep Learning Solution for Mobile User. Bachelor thesis, Swiss German University.

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Abstract

Existing handwriting recognition solution on mobile app provides off premise service which means the handwriting is processed in overseas servers. Data sent to abroad servers are not under our control and could be possibly mishandled or misused. As recognizing handwriting is a complex problem, deep learning is needed. This research has the objective of developing an on premise Indonesian handwriting recognition using open source deep learning solution. Comparison of various deep learning solution to be used in the development are done. The deep learning solution will be used to build architectures. Various database format are also compared to decide which format is suitable to gather Indonesian handwriting database. The gathered Indonesian handwriting database and built architectures are used for experiments which consists of number of Convolutional Neural Network (CNN) layers, rotation and noise data augmentation, and Gated Recurrent Unit (GRU) vs Long Short Term Memory (LSTM). Experiment results shows that rotation data augmentation is the parameter to be change to improve word accuracy and Character Error Rate (CER). The improvement is 64.8% and 23.2% to 69.6% and 20.6% respectively.

Item Type: Thesis (Bachelor)
Uncontrolled Keywords: On Premise ; Deep Learning ; Indonesian Handwriting Recognition ; CRNN ; Tensorflow
Subjects: T Technology > T Technology (General) > T58.6 Management information systems
Divisions: Faculty of Engineering and Information Technology > Department of Information Technology
Depositing User: Adityatama Ratangga
Date Deposited: 19 May 2020 13:48
Last Modified: 19 May 2020 13:48
URI: http://repository.sgu.ac.id/id/eprint/618

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