Loading...
Thumbnail Image
Publication

Using deep learning for IoT-enabled smart camera: a use case of flood monitoring

Mishra, Bhupesh K.
Thakker, Dhaval
Mazumdar, S.
Simpson, Sydney
Neagu, Daniel
Publication Date
2019-07
End of Embargo
Supervisor
Rights
© 2019 IEEE. Reproduced in accordance with the publisher's self-archiving policy.
Peer-Reviewed
Yes
Open Access status
openAccess
Accepted for publication
2019-05-07
Institution
Department
Awarded
Embargo end date
Additional title
Abstract
In recent years, deep learning has been increasingly used for several applications such as object analysis, feature extraction and image classification. This paper explores the use of deep learning in a flood monitoring application in the context of an EC-funded project, Smart Cities and Open Data REuse (SCORE). IoT sensors for detecting blocked gullies and drainages are notoriously hard to build, hence we propose a novel technique to utilise deep learning for building an IoT-enabled smart camera to address this need. In our work, we apply deep leaning to classify drain blockage images to develop an effective image classification model for different severity of blockages. Using this model, an image can be analysed and classified in number of classes depending upon the context of the image. In building such model, we explored the use of filtering in terms of segmentation as one of the approaches to increase the accuracy of classification by concentrating only into the area of interest within the image. Segmentation is applied in data pre-processing stage in our application before the training. We used crowdsourced publicly available images to train and test our model. Our model with segmentation showed an improvement in the classification accuracy.
Version
Accepted manuscript
Citation
Mishra BK, Thakker D, Mazumdar S et al (2019) Using deep learning for IoT-enabled camera: a use case of flood monitoring. In: 10th IEEE International Conference on Dependable Systems, Services and Technologies (DESSERT). 5-7 June 2019, Leeds, United Kingdom. 235-240.
Link to publisher’s version
Link to published version
Type
Conference paper
Qualification name
Notes