Authors
Abstract
Implementations of object detection by using common devices for general purpose application is not widely used for speed and prone to errors. Most of research in speed detection using known method such as Centernet, Yolov3, Fast-RNN has variant result since the computer used are different. This experiment try to conduct experiments for person detection with Centernet and Yolov3 method using commonly used computer only using CPU. Based on the experiments, Yolov3 can give a much better precision for person detection by 98.42% of mAP point while Centernet only 97%. In terms of processing speed, Centernet can give much better speed where it can detect a person in average 370ms better than Yolov3 with average of 1050 ms or 1 second.
Citation
APA Style (7th ed.)
Friendly, Harizahayu, Zakaria Sembiring (2024). Speed and Accuracy Comparison of Person Detection Using Pretrained CenterNet and Yolov3. International Journal of Research in Vocational Studies (IJRVOCAS), 3(4), 57-60. https://doi.org/10.53893/ijrvocas.v3i4.17
MLA Style (9th ed.)
Friendly, et al. "Speed and Accuracy Comparison of Person Detection Using Pretrained CenterNet and Yolov3." International Journal of Research in Vocational Studies (IJRVOCAS), vol. 3, no. 4, 2024, pp. 57-60. https://doi.org/10.53893/ijrvocas.v3i4.17
Harvard Style
Friendly, Harizahayu, Zakaria Sembiring (2024) 'Speed and Accuracy Comparison of Person Detection Using Pretrained CenterNet and Yolov3', International Journal of Research in Vocational Studies (IJRVOCAS), 3(4), pp. 57-60. Available at: https://doi.org/10.53893/ijrvocas.v3i4.17.
IEEE Style
Friendly, Harizahayu, Z. Sembiring, "Speed and Accuracy Comparison of Person Detection Using Pretrained CenterNet and Yolov3," International Journal of Research in Vocational Studies (IJRVOCAS), vol. 3, no. 4, pp. 57-60, 2024. doi: 10.53893/ijrvocas.v3i4.17.

