scholarly journals Using Deep Learning for IoT-enabled Camera: A Use Case of Flood Monitoring

Author(s):  
Bhupesh Kumar Mishra ◽  
Dhavalkumar Thakker ◽  
Suvodeep Mazumdar ◽  
Sydney Simpson ◽  
Daniel Neagu
2020 ◽  
Vol 6 (1) ◽  
pp. 51-61 ◽  
Author(s):  
Bhupesh Kumar Mishra ◽  
Dhavalkumar Thakker ◽  
Suvodeep Mazumdar ◽  
Daniel Neagu ◽  
Marian Gheorghe ◽  
...  

Author(s):  
Yilin Yan ◽  
Jonathan Chen ◽  
Mei-Ling Shyu

Stance detection is an important research direction which attempts to automatically determine the attitude (positive, negative, or neutral) of the author of text (such as tweets), towards a target. Nowadays, a number of frameworks have been proposed using deep learning techniques that show promising results in application domains such as automatic speech recognition and computer vision, as well as natural language processing (NLP). This article shows a novel deep learning-based fast stance detection framework in bipolar affinities on Twitter. It is noted that millions of tweets regarding Clinton and Trump were produced per day on Twitter during the 2016 United States presidential election campaign, and thus it is used as a test use case because of its significant and unique counter-factual properties. In addition, stance detection can be utilized to imply the political tendency of the general public. Experimental results show that the proposed framework achieves high accuracy results when compared to several existing stance detection methods.


Smart Cities ◽  
2020 ◽  
Vol 3 (4) ◽  
pp. 1353-1382
Author(s):  
Dhavalkumar Thakker ◽  
Bhupesh Kumar Mishra ◽  
Amr Abdullatif ◽  
Suvodeep Mazumdar ◽  
Sydney Simpson

Traditional Artificial Intelligence (AI) technologies used in developing smart cities solutions, Machine Learning (ML) and recently Deep Learning (DL), rely more on utilising best representative training datasets and features engineering and less on the available domain expertise. We argue that such an approach to solution development makes the outcome of solutions less explainable, i.e., it is often not possible to explain the results of the model. There is a growing concern among policymakers in cities with this lack of explainability of AI solutions, and this is considered a major hindrance in the wider acceptability and trust in such AI-based solutions. In this work, we survey the concept of ‘explainable deep learning’ as a subset of the ‘explainable AI’ problem and propose a new solution using Semantic Web technologies, demonstrated with a smart cities flood monitoring application in the context of a European Commission-funded project. Monitoring of gullies and drainage in crucial geographical areas susceptible to flooding issues is an important aspect of any flood monitoring solution. Typical solutions for this problem involve the use of cameras to capture images showing the affected areas in real-time with different objects such as leaves, plastic bottles etc., and building a DL-based classifier to detect such objects and classify blockages based on the presence and coverage of these objects in the images. In this work, we uniquely propose an Explainable AI solution using DL and Semantic Web technologies to build a hybrid classifier. In this hybrid classifier, the DL component detects object presence and coverage level and semantic rules designed with close consultation with experts carry out the classification. By using the expert knowledge in the flooding context, our hybrid classifier provides the flexibility on categorising the image using objects and their coverage relationships. The experimental results demonstrated with a real-world use case showed that this hybrid approach of image classification has on average 11% improvement (F-Measure) in image classification performance compared to DL-only classifier. It also has the distinct advantage of integrating experts’ knowledge on defining the decision-making rules to represent the complex circumstances and using such knowledge to explain the results.


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