Statistical Analysis of Design Aspects of Various YOLO-Based Deep Learning Models for Object Detection

被引:0
|
作者
U. Sirisha
S. Phani Praveen
Parvathaneni Naga Srinivasu
Paolo Barsocchi
Akash Kumar Bhoi
机构
[1] VIT-AP University,School of Computer Science and Engineering
[2] Prasad V Potluri Siddhartha Institute of Technology,Department of Computer Science and Engineering
[3] Sikkim Manipal University,Directorate of Research
[4] KIET Group of Institutions,Institute of Information Science and Technologies
[5] National Research Council,undefined
来源
International Journal of Computational Intelligence Systems | / 16卷
关键词
Object detection; YOLO; Darknet; Deep learning; Performance analysis;
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学科分类号
摘要
Object detection is a critical and complex problem in computer vision, and deep neural networks have significantly enhanced their performance in the last decade. There are two primary types of object detectors: two stage and one stage. Two-stage detectors use a complex architecture to select regions for detection, while one-stage detectors can detect all potential regions in a single shot. When evaluating the effectiveness of an object detector, both detection accuracy and inference speed are essential considerations. Two-stage detectors usually outperform one-stage detectors in terms of detection accuracy. However, YOLO and its predecessor architectures have substantially improved detection accuracy. In some scenarios, the speed at which YOLO detectors produce inferences is more critical than detection accuracy. This study explores the performance metrics, regression formulations, and single-stage object detectors for YOLO detectors. Additionally, it briefly discusses various YOLO variations, including their design, performance, and use cases.
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