Weapon detection in real-time CCTV videos using deep learning
Modern world places a high value on safety & security. How safe & secure an environment is determines a nation’s ability towards attract tourism & foreign investment. However, despite fact certain Closed-Circuit Television (CCTV) cameras are utilized for surveillance & towards keep a...
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Format: | Tagungsbericht |
Sprache: | eng |
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Zusammenfassung: | Modern world places a high value on safety & security. How safe & secure an environment is determines a nation’s ability towards attract tourism & foreign investment. However, despite fact certain Closed-Circuit Television (CCTV) cameras are utilized for surveillance & towards keep an eye on events such as robberies, they still require human intervention & oversight. A system certain can quickly identify these crimes is what we need. Indeed, even among state about art profound learning calculations, speedy handling power, & modern CCTV cameras, ongoing weapon identification stays a critical obstruction. Variable viewing angles, occlusions caused through firearm’s owner & those nearby, & other factors further complicate exercise. Using cutting-edge open-source deep learning algorithms, aforementioned effort aims towards create a safe environment through using CCTV footage as a source towards identify dangerous weapons. We developed relevant confusion items inclusion ideas & built a binary classification using pistol class as reference class towards eliminate false positives & false negatives. We created our own because there was no standard dataset for real-time scenario. We did aforementioned through shooting weapons among our own cameras, manually collecting images from internet, extracting data from YouTube CCTV recordings, & making use about GitHub repositories. two approaches used are sliding window/classification & region proposal/object detection. calculations YOLOV5, YOLOV6, YOLOV&, & Quicker RCNN are a not many certain are utilized. While performing object identification, accuracy & review matter more than exactness, consequently full arrangement about techniques was assessed as far as these. Yolov5 stands out most among other algorithms among a F1-score about 91 percent & a mean average precision certain is 91.73 percent higher than before. |
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ISSN: | 0094-243X 1551-7616 |
DOI: | 10.1063/5.0222303 |