Survey on Image Based Object Detectors
| Cserni, Márton | ||
| Rövid, András | ||
| 2022-05-03T10:04:45Z | ||
| 2022-05-03T10:04:45Z | ||
| 2022 | ||
AbstractSensor fusion-based detector utilizes camera sensors to solve the problem of recognizing objects and their classifications accurately. This has been proven to increase accuracy compared to single sensor detectors and can significantly help with the 3D tracking of vehicles in the sensor system’s area of interest. Even at a distance, where no lidar points are available from the target, a high-resolution camera-based detector can easily detect and classify vehicles. There is a variety of real-time capable 2D object detector convolutional neural networks, some of which are open source. This survey compiles a list of these algorithms, comparing them by precision scores on well-known datasets, and based on experimental evaluation completed on camera images taken on the ZalaZONE test-track to evaluate the distances at which the detectors first perceived the test vehicles. Additionally, inference times are also compared. | ||
| http://hdl.handle.net/10890/16966 | ||
| en | ||
| Survey on Image Based Object Detectors | ||
| Open access | ||
| Budapest University of Technology and Economics | ||
| 2022.03.31 | ||
| Budapest University of Technology and Economics | ||
| The First Conference on ZalaZONE Related R&I Activities of Budapest University of Technology and Economics 2022 | ||
| 2022.03.31 | ||
| ISBN 978-963-421-873-9 | ||
| Budapest University of Technology and Economics | ||
| Budapest | ||
| Proceedings of The First Conference on ZalaZONE Related R&I Activities of Budapest University of Technology and Economics 2022 | ||
| Department of Automotive Technologies | ||
| Kiadói változat | ||
| Faculty of Transportation Engineering and Vehicle Engineering | ||
| 10 | ||
| 10.3311/BMEZalaZONE2022-002 | ||
| 14 | ||
| 2D object detection | ||
| autonomous driving | ||
| camera | ||
| ZalaZONE | ||
| Budapest University of Technology and Economics |
Files
Original bundle
- Name:
- 02_Cserni_BMEZalaZONE.pdf
- Size:
- 239.11 KB
- Format:
- Adobe Portable Document Format
- Description:
- 02_Cserni_BMEZalaZONE.pdf