Real-time crime detection using convolutional LSTM and YOLOv7
This thesis is submitted in partial fulfillment of the requirements for the degree of Bachelor of Science in Computer Science, 2023.
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Brac University
2023
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10361-220382023-12-31T21:02:30Z Real-time crime detection using convolutional LSTM and YOLOv7 Sakiba, Cyrus Tarannum, Syeda Maisha Nur, Farzana Arpan, Fahad Faisal Anzum, Ahnaf Ahmed Rahman, Md. Khalilur Department of Computer Science and Engineering, Brac University Deep learning Bidirectional LSTM YOLOv7 YOLOv4 MobilenetV2 Violence prediction Realtime Machine learning Cognitive learning theory Real-time data processing This thesis is submitted in partial fulfillment of the requirements for the degree of Bachelor of Science in Computer Science, 2023. Cataloged from PDF version of thesis. Includes bibliographical references (pages 50-51). The principal goal of this study is to create a crime detection system in real-time that can effectively handle closed-circuit television (CCTV) video feeds and evaluate them for possible criminal occurrences. The system’s goal is to improve public safety by offering an advanced approach that makes use of ConvLSTM’s expertise in modeling temporal dynamics and YOLO v7’s expertise in object recognition. We suggest a posture and weapon recognition system that can be applied to real-time videos. The first method proposes the utilization of ConvLSTM for the detection of violent postures. The Conv part is derived from MobileNet v2, while a bi-directional LSTM technique is used. MobileNet v2 was chosen for its superior accuracy and efficiency as a result of its lightweight architecture. The model will be trained to recognize illegal behavior by being exposed to annotated datasets of surveillance videos that depict different types of crime. The output of the system distinguishes between violent and non-violent postures in real-time videos. The system identifies violent postures as kicking, collar grabbing, choking, hair pulling, punching, slapping, etc., while identifying non-violent postures as hugging, handshaking, touching shoulders, walking, etc. We used the real-time violence and non-violence dataset from Kaggle. The second method uses YOLO v7 to detect weapons in three categories, e.g., sticks, guns, and sharp objects. The YOLO v4 was also employed for the aforementioned objective; however, the YOLO v7 yielded superior outcomes, hence it was chosen for further implementation. We customized the weapons dataset to enable our model to accurately detect local Asian weapons like machetes and sticks. The system’s intended use is to prevent illegal acts using two distinct machine learning models in a seamless way. Cyrus Sakiba Syeda Maisha Tarannum Farzana Nur Fahad Faisal Arpan Ahnaf Ahmed Anzum B.Sc. in Computer Science 2023-12-31T04:24:57Z 2023-12-31T04:24:57Z 2023 2023-05 Thesis ID 19101512 ID 19101178 ID 19101480 ID 22341070 ID 22341086 http://hdl.handle.net/10361/22038 en Brac University theses are protected by copyright. They may be viewed from this source for any purpose, but reproduction or distribution in any format is prohibited without written permission. 51 pages application/pdf Brac University |
institution |
Brac University |
collection |
Institutional Repository |
language |
English |
topic |
Deep learning Bidirectional LSTM YOLOv7 YOLOv4 MobilenetV2 Violence prediction Realtime Machine learning Cognitive learning theory Real-time data processing |
spellingShingle |
Deep learning Bidirectional LSTM YOLOv7 YOLOv4 MobilenetV2 Violence prediction Realtime Machine learning Cognitive learning theory Real-time data processing Sakiba, Cyrus Tarannum, Syeda Maisha Nur, Farzana Arpan, Fahad Faisal Anzum, Ahnaf Ahmed Real-time crime detection using convolutional LSTM and YOLOv7 |
description |
This thesis is submitted in partial fulfillment of the requirements for the degree of Bachelor of Science in Computer Science, 2023. |
author2 |
Rahman, Md. Khalilur |
author_facet |
Rahman, Md. Khalilur Sakiba, Cyrus Tarannum, Syeda Maisha Nur, Farzana Arpan, Fahad Faisal Anzum, Ahnaf Ahmed |
format |
Thesis |
author |
Sakiba, Cyrus Tarannum, Syeda Maisha Nur, Farzana Arpan, Fahad Faisal Anzum, Ahnaf Ahmed |
author_sort |
Sakiba, Cyrus |
title |
Real-time crime detection using convolutional LSTM and YOLOv7 |
title_short |
Real-time crime detection using convolutional LSTM and YOLOv7 |
title_full |
Real-time crime detection using convolutional LSTM and YOLOv7 |
title_fullStr |
Real-time crime detection using convolutional LSTM and YOLOv7 |
title_full_unstemmed |
Real-time crime detection using convolutional LSTM and YOLOv7 |
title_sort |
real-time crime detection using convolutional lstm and yolov7 |
publisher |
Brac University |
publishDate |
2023 |
url |
http://hdl.handle.net/10361/22038 |
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