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Open Source Dataset and Deep Learning Models for Online Digit Gesture Recognition on Touchscreens
Date Issued
2017-09-01
Date Available
2018-04-25T17:02:51Z
Abstract
This paper presents an evaluation of deep neural networks for recognition of digits entered by users on a smartphone touchscreen. A new large dataset of Arabic numerals was collected for training and evaluation of the network. The dataset consists of spatial and temporal touch data recorded for 80 digits entered by 260 users. Two neural network models were investigated. The first model was a 2D convolutional neural (ConvNet) network applied to bitmaps of the glpyhs created by interpolation of the sensed screen touches and its topology is similar to that of previously published models for offline handwriting recognition from scanned images. The second model used a 1D ConvNet architecture but was applied to the sequence of polar vectors connecting the touch points. The models were found to provide accuracies of 98.50% and 95.86%, respectively. The second model was much simpler, providing a reduction in the number of parameters from 1,663,370 to 287,690. The dataset has been made available to the community as an open source resource.
Type of Material
Conference Publication
Publisher
The Irish Pattern Recognition & Classification Society
Web versions
Language
English
Status of Item
Peer reviewed
Conference Details
Irish Machine Vision and Image Processing Conference (IMVIP), Maynooth University, Ireland, 30 August- 1 September 2017
This item is made available under a Creative Commons License
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Name
IMVIP_2017_paper_52.pdf
Size
161.5 KB
Format
Adobe PDF
Checksum (MD5)
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