Interpretable Feature Learning Framework for Smoking Behavior Detection
- URL: http://arxiv.org/abs/2112.08178v1
- Date: Sun, 12 Dec 2021 11:05:35 GMT
- Title: Interpretable Feature Learning Framework for Smoking Behavior Detection
- Authors: Nakayiza Hellen and Ggaliwango Marvin
- Abstract summary: Interpretable feature learning framework for smoking behavior detection utilizing a Deep Learning VGG-16 pretrained network.
Technology can also detect other smokeable drugs like weed, shisha, marijuana etc.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Smoking in public has been proven to be more harmful to nonsmokers, making it
a huge public health concern with urgent need for proactive measures and
attention by authorities. With the world moving towards the 4th Industrial
Revolution, there is a need for reliable eco-friendly detective measures
towards this harmful intoxicating behavior to public health in and out of smart
cities. We developed an Interpretable feature learning framework for smoking
behavior detection which utilizes a Deep Learning VGG-16 pretrained network to
predict and classify the input Image class and a Layer-wise Relevance
Propagation (LRP) to explain the network detection or prediction of smoking
behavior based on the most relevant learned features or pixels or neurons. The
network's classification decision is based mainly on features located at the
mouth especially the smoke seems to be of high importance to the network's
decision. The outline of the smoke is highlighted as evidence for the
corresponding class. Some elements are seen as having a negative effect on the
smoke neuron and are consequently highlighted differently. It is interesting to
see that the network distinguishes important from unimportant features based on
the image regions. The technology can also detect other smokeable drugs like
weed, shisha, marijuana etc. The framework allows for reliable identification
of action-based smokers in unsafe zones like schools, shopping malls, bus
stops, railway compartments or other violated places for smoking as per the
government's regulatory health policies. With installation clearly defined in
smoking zones, this technology can detect smokers out of range.
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