Javascript must be enabled to continue!
INVESTIGATING AN EXCEPTIONAL LEAP IN SURVEILLANCE TECHNOLOGY USING YOLO V8 ALGORITHM FOR DETECTING AND PROCESSING VISUAL IMAGES OF DIFFERENT OBJECTS
View through CrossRef
This study presents a comprehensive evaluation of the YOLO V8 framework within the context of surveillance technology, focusing on its performance in three critical use cases: license plate detection, face recognition, and suspicious activity detection. Our proposed model utilizes camera-captured input data processed through the YOLO V8 architecture. Experiments benchmarked YOLO V8 against YOLO V7, Faster R-CNN, and SSD using publicly available datasets: OpenALPR Benchmark Dataset for license plates, Labeled Faces in the Wild (LFW) for face recognition, and UCF-Crime Dataset for suspicious activity detection. Advanced frameworks like TensorFlow and PyTorch were employed, along with cutting-edge GPU architectures to optimize training and inference speeds. Performance was rigorously evaluated based on key metrics including mean Average Precision (mAP), precision, recall, F1 score, and inference time. Results demonstrated that YOLO V8 outperformed competing models across all metrics, highlighting its effectiveness for real-time detection in surveillance applications.
Mediterranean Publications and Research International
Title: INVESTIGATING AN EXCEPTIONAL LEAP IN SURVEILLANCE TECHNOLOGY USING YOLO V8 ALGORITHM FOR DETECTING AND PROCESSING VISUAL IMAGES OF DIFFERENT OBJECTS
Description:
This study presents a comprehensive evaluation of the YOLO V8 framework within the context of surveillance technology, focusing on its performance in three critical use cases: license plate detection, face recognition, and suspicious activity detection.
Our proposed model utilizes camera-captured input data processed through the YOLO V8 architecture.
Experiments benchmarked YOLO V8 against YOLO V7, Faster R-CNN, and SSD using publicly available datasets: OpenALPR Benchmark Dataset for license plates, Labeled Faces in the Wild (LFW) for face recognition, and UCF-Crime Dataset for suspicious activity detection.
Advanced frameworks like TensorFlow and PyTorch were employed, along with cutting-edge GPU architectures to optimize training and inference speeds.
Performance was rigorously evaluated based on key metrics including mean Average Precision (mAP), precision, recall, F1 score, and inference time.
Results demonstrated that YOLO V8 outperformed competing models across all metrics, highlighting its effectiveness for real-time detection in surveillance applications.
Related Results
Building Primary Palliative Care Capacity Through Education at a National Level: Pallium Canada and its LEAP Courses
Building Primary Palliative Care Capacity Through Education at a National Level: Pallium Canada and its LEAP Courses
Background All the palliative care needs of a population cannot be met by specialist palliative care clinicians and teams alone. Both primary-level and specialist-level palliative ...
Adaptive Drop Approaches to Train Spiking-YOLO Network for Traffic Flow Counting
Adaptive Drop Approaches to Train Spiking-YOLO Network for Traffic Flow Counting
Abstract
Traffic flow counting is an object detection problem. YOLO (" You Only Look Once ") is a popular object detection network. Spiking-YOLO converts the YOLO network f...
Power equipment image enhancement processing based on YOLO-v8 target detection model under MSRCR algorithm
Power equipment image enhancement processing based on YOLO-v8 target detection model under MSRCR algorithm
Abstract
With the rapid development of the power industry, higher requirements have been put forward for real-time monitoring and fault identification of power equip...
End-to-End Reservoir Surveillance Optimization Through Automated Value of Information Assessments
End-to-End Reservoir Surveillance Optimization Through Automated Value of Information Assessments
Abstract
Effective reservoir management requires continuous surveillance to monitor the reservoir's performance and optimize production. To facilitate this, we propo...
Wastewater-based surveillance for tracing the circulation of Dengue and Chikungunya viruses
Wastewater-based surveillance for tracing the circulation of Dengue and Chikungunya viruses
SummaryBackgroundArboviral diseases, transmitted by infected arthropods, pose significant economic and societal threats. Their global distribution and prevalence have increased in ...
Openwork in Early Islamic Metalwork from Khorasan and Transoxiana
Openwork in Early Islamic Metalwork from Khorasan and Transoxiana
Metalwork from Khorasan is a well-known magnitude in the history of Islamic art. Thanks to the large number of metal objects from this region, and due to the studies carried out on...
YOLO-V2 (You Only Look Once)
YOLO-V2 (You Only Look Once)
The you-only-look-once (YOLO) v2 object detector uses a single stage object detection network. YOLO v2 is faster than other two-stage deep learning object detectors, such as region...
Real-world retrospective cohort study of inflammatory bowel disease colorectal cancer surveillance
Real-world retrospective cohort study of inflammatory bowel disease colorectal cancer surveillance
Objective
Inflammatory bowel disease (IBD) colorectal cancer (CRC) surveillance aims to reduce cancer-associated mortality. We report outcomes of IBD-CRC colonosc...

