Anupam Dey

Work place: Department of Computer Science Faculty of Information Science and Technology American International University – Bangladesh

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Research Interests: Image Processing, Virtual Reality, Artificial Intelligence

Biography

Anupam Dey is a student of undergraduate (UG) program majoring in Computer Science & Engineering from American International University-Bangladesh. He is also working as an embedded software engineer for last one year. He was awarded “Dean List Honors” in AIUB. He has contributions in open source libraries. His research interest focuses but not limited to Image Processing, Computer Vision, Augmented Reality, Virtual Reality, Artificial Intelligence, Face Tracking and Machine Learning.

Author Articles
Anomaly Detection in Crowded Scene by Pedestrians Behaviour Extraction using Long Short Term Method: A Comprehensive Study

By Anupam Dey Fahad Mira Saleque Ahmed Raiyan Sharif A. F. M. Saifuddin Saif

DOI: https://doi.org/10.5815/ijeme.2019.01.05, Pub. Date: 8 Jan. 2019

With the expansion of worldwide security concerns and a consistently expanding requirement for successful checking of open places, i.e. air terminals, railroad stations, shopping centres, crowded sports fields, army bases or smart healthcare facilities such as daily activity monitoring and fall detection in old people’s homes is increasing very rapidly. The visual occlusions and ambiguities in crowded scenes, usage of suitable method and in addition the perplexing practices and scene semantics make the investigation a challenging task. This research demonstrates comprehensive and critical analysis of crowd scene involves in object detection, tracking, feature extraction and learning from visual surveillance which helps to recognize behavioural pattern. This research refers scene understanding as scene layout, i.e. finding streets, structures, side-walks, vehicles turning, person on foot intersection and scene status such as crowd congestion, split, merge etc. The  significance of the proposed comprehensive review to create crowd administration procedures and help the development of the group or people, to maintain a strategic distance from the group calamities and guarantee general society security. Based on the observation of previous research in three aspects, i.e. review based on methods, frameworks and critical existing results analysis, this research propose a framework for anomaly detection in crowded scene using LSTM (long Short-Term Method).  Proposed comprehensive review is expected to contribute significantly for the investigation of behavior pattern analysis in computer vision research domains.

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