TY - GEN
T1 - License Plate Detection Using Deep Learning Object Detection Models
AU - Leong, Kar Wan
AU - Nisar, Humaira
AU - Yap, Vooi Voon
AU - Yeap, Kim Ho
AU - Lo, Po Kim
N1 - Funding Information:
This research work is supported by Universiti Tunku Abdul Rahman Research Fund (UTARRF) (Grant No. IPSR/RMC/UTARRF/2022-2/H03) and (IPSR/RMC/UTARRF/2018-C2/Y01), Malaysia.
Publisher Copyright:
© 2023 IEEE.
PY - 2023
Y1 - 2023
N2 - Object detection is an extension of image classification tasks in computer vision. Its goal is to locate an object of interest in any given image input. In the past, this was done by traditional hand-crafted feature algorithms i.e., SIFT, SURF, HOG, BRIEF, and ORB. These algorithms have been successful in their field however they do possess some downsides due to their nature. For example, they can be slow in detection speed, not as accurate, and difficult to develop. Since 2012, deep learning has become an emerging technology that can solve object detection problems with relatively better performance. However, not many studies have been done to deploy deep learning object detection models in real-world scenarios, e.g., license plate detection. License plate detection is a challenging task in computer vision because the input image captured can be in different sizes, colors, distances, orientations, and lighting conditions. This project aims to study and improve license plate detection using deep learning models. As of the current year, the model YOLOv4 has achieved 43.5% Average Precision (AP) on MS COCO. Meanwhile, EfficientDet-D7 has achieved 55.1 AP on COCO test-dev. In this paper off-the-shelves object detection models are trained on CCPD license plate dataset. Two approaches have been carried out to improve their accuracy, i.e., image preprocessing step, and modifying existing model architecture. Preprocessing steps show improvement for all test sets in terms of (TP-FN-FP) value, i.e., (69-31-45 to 75-25-43) for db test set, (70-30-28 to 73-27-28) for blur test set, (52-48-75 to 66-34-68) for fn test set, (92-8-9 to 97-3-4) for rotate test set, (77-23-26 to 85-15-18) for tilt test set, and (67-33-61 to 76-24-56) for challenge test set. The improved model has achieved (96.96%) mean Average Precision [email protected] on the validation dataset compared to the original model (83.64%)
AB - Object detection is an extension of image classification tasks in computer vision. Its goal is to locate an object of interest in any given image input. In the past, this was done by traditional hand-crafted feature algorithms i.e., SIFT, SURF, HOG, BRIEF, and ORB. These algorithms have been successful in their field however they do possess some downsides due to their nature. For example, they can be slow in detection speed, not as accurate, and difficult to develop. Since 2012, deep learning has become an emerging technology that can solve object detection problems with relatively better performance. However, not many studies have been done to deploy deep learning object detection models in real-world scenarios, e.g., license plate detection. License plate detection is a challenging task in computer vision because the input image captured can be in different sizes, colors, distances, orientations, and lighting conditions. This project aims to study and improve license plate detection using deep learning models. As of the current year, the model YOLOv4 has achieved 43.5% Average Precision (AP) on MS COCO. Meanwhile, EfficientDet-D7 has achieved 55.1 AP on COCO test-dev. In this paper off-the-shelves object detection models are trained on CCPD license plate dataset. Two approaches have been carried out to improve their accuracy, i.e., image preprocessing step, and modifying existing model architecture. Preprocessing steps show improvement for all test sets in terms of (TP-FN-FP) value, i.e., (69-31-45 to 75-25-43) for db test set, (70-30-28 to 73-27-28) for blur test set, (52-48-75 to 66-34-68) for fn test set, (92-8-9 to 97-3-4) for rotate test set, (77-23-26 to 85-15-18) for tilt test set, and (67-33-61 to 76-24-56) for challenge test set. The improved model has achieved (96.96%) mean Average Precision [email protected] on the validation dataset compared to the original model (83.64%)
KW - deep learning
KW - license plate detection
KW - object detection
UR - http://www.scopus.com/inward/record.url?scp=85173715186&partnerID=8YFLogxK
U2 - 10.1109/ICCCE58854.2023.10246050
DO - 10.1109/ICCCE58854.2023.10246050
M3 - Conference Proceeding (Non-Journal item)
AN - SCOPUS:85173715186
T3 - Proceedings of the 9th International Conference on Computer and Communication Engineering, ICCCE 2023
SP - 377
EP - 382
BT - Proceedings of the 9th International Conference on Computer and Communication Engineering, ICCCE 2023
PB - IEEE Press
T2 - 9th International Conference on Computer and Communication Engineering, ICCCE 2023
Y2 - 15 August 2023 through 16 August 2023
ER -