COGNITIVE SCIENCE BASED REAL TIME THREAT WARNING SYSTEM USING DEEP LEARNING AND COMPUTER VISION
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Date
2022-12-01Author
SINGH, ANURAG 17SCSE301004
Kumar, Dr. Naresh Supervisor
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Show full item recordAbstract
It is critical for many countries to ensure public safety in detecting and
identifying threats in a night, commercial places, border areas and public places.
Humans, animals, and forests are extremely valuable components of our
ecosystem but are consistently surrounded by a variety of threats. For instance,
forest fires and large fire flames present immense risks as they can damage
residential areas, forests, defence systems, and industries. While fires in the
early stages can be identified by smoke detectors, sensors, and human assistants,
these measures usually take too long and have a high false rate in detecting the
fire flames, their range and size. Majority of past research in this area has
focused on the use of image-level categorization and object-level detection
techniques. As an X-ray and thermal security image analysis strategy, object
separation can considerably improve automatic threat detection when used in
conjunction with other techniques. In order to detect possible threats, the effects
of introducing segmentation deep learning models into the threat detection
pipeline of a large imbalanced X-ray and thermal dataset were investigated. In
our proposed system, we established a novel deep learning and computer vision-
based threat detection model using transfer learning model by optimizing the
hyper-parameters, which includes the learning rate of the model. We further
optimized the batch size and mini-batch gradient to improve detection and
classification of these types of threats in real-time with greater accuracy and size
in a dynamic environment so that the system is capable of making decisions
without human assistance.