Neville Roach Laboratory, National ICT Australia, School of Computer Science and Engineering, University of New South Wales, Kensington, NSW, Australia.
IEEE Trans Image Process. 2010 Sep;19(9):2491-501. doi: 10.1109/TIP.2010.2048970. Epub 2010 Apr 22.
This paper proposes a joint random field (JRF) model for moving vehicle detection in video sequences. The JRF model extends the conditional random field (CRF) by introducing auxiliary latent variables to characterize the structure and evolution of visual scene. Hence, detection labels (e.g., vehicle/roadway) and hidden variables (e.g., pixel intensity under shadow) are jointly estimated to enhance vehicle segmentation in video sequences. Data-dependent contextual constraints among both detection labels and latent variables are integrated during the detection process. The proposed method handles both moving cast shadows/lights and various weather conditions. Computationally efficient algorithm has been developed for real-time vehicle detection in video streams. Experimental results show that the approach effectively deals with various illumination conditions and robustly detects moving vehicles even in grayscale video.
本文提出了一种用于视频序列中移动车辆检测的联合随机场(JRF)模型。该 JRF 模型通过引入辅助隐变量来扩展条件随机场(CRF),以描述视觉场景的结构和演化。因此,检测标签(例如车辆/道路)和隐变量(例如阴影下的像素强度)被联合估计,以增强视频序列中的车辆分割。在检测过程中,集成了检测标签和隐变量之间的数据相关上下文约束。所提出的方法可以处理移动的阴影/光线和各种天气条件。已经开发了一种计算效率高的算法,用于视频流中的实时车辆检测。实验结果表明,该方法能够有效地处理各种光照条件,并在灰度视频中稳健地检测移动车辆。