Centre for Computer Vision Research, Department of Computer Engineering, University of Engineering and Technology, Taxila 47050, Pakistan.
Swarm Robotics Lab, National Centre for Robotics and Automation,University of Engineering and Technology, Taxila 47050, Pakistan.
Sensors (Basel). 2020 Feb 14;20(4):1033. doi: 10.3390/s20041033.
Vehicle make and model recognition (VMMR) is a key task for automated vehicular surveillance (AVS) and various intelligent transport system (ITS) applications. In this paper, we propose and study the suitability of the bag of expressions (BoE) approach for VMMR-based applications. The method includes neighborhood information in addition to visual words. BoE improves the existing power of a bag of words (BOW) approach, including occlusion handling, scale invariance and view independence. The proposed approach extracts features using a combination of different keypoint detectors and a Histogram of Oriented Gradients (HOG) descriptor. An optimized dictionary of expressions is formed using visual words acquired through k-means clustering. The histogram of expressions is created by computing the occurrences of each expression in the image. For classification, multiclass linear support vector machines (SVM) are trained over the BoE-based features representation. The approach has been evaluated by applying cross-validation tests on the publicly available National Taiwan Ocean University-Make and Model Recognition (NTOU-MMR) dataset, and experimental results show that it outperforms recent approaches for VMMR. With multiclass linear SVM classification, promising average accuracy and processing speed are obtained using a combination of keypoint detectors with HOG-based BoE description, making it applicable to real-time VMMR systems.
车辆品牌和型号识别(VMMR)是自动化车辆监控(AVS)和各种智能交通系统(ITS)应用的关键任务。在本文中,我们提出并研究了基于词汇包(BoE)方法在 VMMR 应用中的适用性。该方法除了视觉词汇外还包含邻域信息。BoE 提高了现有的词汇包(BOW)方法的能力,包括遮挡处理、尺度不变性和视图独立性。所提出的方法使用不同的关键点检测器和方向梯度直方图(HOG)描述符的组合来提取特征。通过 K-均值聚类获取视觉词汇来形成优化的词汇表达字典。通过计算图像中每个表达的出现次数来创建表达的直方图。对于分类,通过在公开的台湾海洋大学品牌和型号识别(NTOU-MMR)数据集上进行交叉验证测试来训练多类线性支持向量机(SVM)。实验结果表明,该方法在 VMMR 方面优于最新的方法。通过使用基于关键点检测器和 HOG 的 BoE 描述的组合,多类线性 SVM 分类获得了有希望的平均准确性和处理速度,使其适用于实时 VMMR 系统。