by Lu, J, Yan, W-Q and Nguyen, M
Abstract:
The traditional pedestrian detection is mostly based on global features of digital images. Nowadays, with the increase of computational power and processing capacity, deep neural networks (DNNs) acquires a high possibility to detect any objects, which has effectively led to a new era of machine learning. In this paper, we investigated a pedestrian detection tool using deep learning based on the YOLOv3 model. After a number of experiments conducted, our YOLOv3 model had shown to achieve 80.20% of accuracy in pedestrian detection with the speed of approximate 15 fps using GPU acceleration. Our direct contributions are: (1) data augment and collection, (2) adjusting deep neural network structures, and (3) superior performance in evaluations for our proposed deep learning model.
Reference:
Human behaviour recognition using deep learning (Lu, J, Yan, W-Q and Nguyen, M), In 2018 15th IEEE International Conference on Advanced Video and Signal Based Surveillance (AVSS), IEEE, 2018.
Bibtex Entry:
@inproceedings{lu2018humanlearning, author = {Lu, J and Yan, W-Q and Nguyen, M}, booktitle = {2018 15th IEEE International Conference on Advanced Video and Signal Based Surveillance (AVSS)}, organization = {Auckland}, publisher = {IEEE}, title = {Human behaviour recognition using deep learning}, url = {https://ieeexplore.ieee.org/document/8639413}, year = {2018}, abstract = {The traditional pedestrian detection is mostly based on global features of digital images. Nowadays, with the increase of computational power and processing capacity, deep neural networks (DNNs) acquires a high possibility to detect any objects, which has effectively led to a new era of machine learning. In this paper, we investigated a pedestrian detection tool using deep learning based on the YOLOv3 model. After a number of experiments conducted, our YOLOv3 model had shown to achieve 80.20% of accuracy in pedestrian detection with the speed of approximate 15 fps using GPU acceleration. Our direct contributions are: (1) data augment and collection, (2) adjusting deep neural network structures, and (3) superior performance in evaluations for our proposed deep learning model.}, doi = {10.1109/AVSS.2018.8639413}, startyear = {2018}, startmonth = {Nov}, startday = {27}, finishyear = {2018}, finishmonth = {Nov}, finishday = {30}, isbn = {978-1-5386-9294-3}, conference = {The 4th International Workshop on Digital Crime and Forensics}, }