Aiming at the problem of repeated detection of YOLOV3 algorithm in vehicle detection, the ADE-YOLOV3 vehicle detection algorithm is proposed. The algorithm uses K-means clustering algorithm to determine the number of target candidate frames and aspect ratio according to the inherent width and height characteristics of the vehicle. Then, according to the results obtained by clustering, the anchor parameters are reset, which makes the ADE-YOLOV3 network have certain pertinence in vehicle detection. Finally, the migration learning method is used to improve the network structure, and the optimal weight model is obtained, which improves the training precision of the model. The experimental results show that compared with the original YOLOV3 meth...
The objective of the thesis is to explore an approach of classifying and localizing different object...
Indonesia is a country with a high population, especially in big cities. The road always crowded wit...
Aiming at the problems of high missed detection rates of the YOLOv7 algorithm for vehicle detection ...
Abstract YOLO (You Only Look Once), as a target detection algorithm with good speed and precision, i...
With the introduction of concepts such as ubiquitous mapping, mapping-related technologies are gradu...
The prevailing real-time system used for vehicle detection and classification using deep learning te...
For the problem of insufficient small target detection ability of the existing network model, a vehi...
Deep Learning is a popular Machine Learning algorithm that is widely used in many areas in current d...
Obstacle detection in complex urban traffic environment has become an important part of unmanned veh...
- Safe driving depends on being able to sense information about the environment around the car, and ...
In order to improve the speed of road vehicle and lane line detection, a road vehicle and lane line ...
When performing multiple target detection, it is difficult to detect small and occluded targets in c...
Vehicle detection is expected to be robust and efficient in various scenes. We propose a multivehicl...
With the rapid development of technology and economy, the number of cars is increasing rapidly, whic...
To reduce the false detection rate of vehicle targets caused by occlusion, an improved method of veh...
The objective of the thesis is to explore an approach of classifying and localizing different object...
Indonesia is a country with a high population, especially in big cities. The road always crowded wit...
Aiming at the problems of high missed detection rates of the YOLOv7 algorithm for vehicle detection ...
Abstract YOLO (You Only Look Once), as a target detection algorithm with good speed and precision, i...
With the introduction of concepts such as ubiquitous mapping, mapping-related technologies are gradu...
The prevailing real-time system used for vehicle detection and classification using deep learning te...
For the problem of insufficient small target detection ability of the existing network model, a vehi...
Deep Learning is a popular Machine Learning algorithm that is widely used in many areas in current d...
Obstacle detection in complex urban traffic environment has become an important part of unmanned veh...
- Safe driving depends on being able to sense information about the environment around the car, and ...
In order to improve the speed of road vehicle and lane line detection, a road vehicle and lane line ...
When performing multiple target detection, it is difficult to detect small and occluded targets in c...
Vehicle detection is expected to be robust and efficient in various scenes. We propose a multivehicl...
With the rapid development of technology and economy, the number of cars is increasing rapidly, whic...
To reduce the false detection rate of vehicle targets caused by occlusion, an improved method of veh...
The objective of the thesis is to explore an approach of classifying and localizing different object...
Indonesia is a country with a high population, especially in big cities. The road always crowded wit...
Aiming at the problems of high missed detection rates of the YOLOv7 algorithm for vehicle detection ...