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Vehicle Detection using Dimensionality Reduction based on Deep Belief Network for Intelligent Transportation System

机译:基于深度信仰网络的智能交通系统使用维度降低的车辆检测

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Vehicle detection is one of essential technology on Intelligent Transportation System. By detect the vehicle, we may know the presence and the number of vehicles on the road for some intervals of time. The challenge is the high dimensionality of features to represent a vehicle. To detect the vehicle, there are two processes, feature extraction and classification. The high dimensionality feature, which is produced on feature extraction step, make a heavy computation on the classification step. This research proposed a dimensionality reduction using Deep Belief Network (DBN) for vehicle detection. We try to detect cars and motorcycles. The feature extraction method is based on descriptive methods such as scaled invariant feature transform. DBN is used to reduce the high dimensionality features that is produced by descriptive methods. For classification task, we choose Support Vector Machine method. Moreover, UIUC dataset and our original data are chose to evaluate the proposed method performance. We are also compared DBN with Principal Component Analysis (PCA) and other method. The result indicates that using DBN as dimensionality reduction method performed better than PCA and others method in vehicle detection.
机译:车辆检测是智能运输系统的基本技术之一。通过检测车辆,我们可能知道道路上的车辆数量和时间间隔。挑战是代表车辆的特征的高度维度。为了检测车辆,有两个过程,特征提取和分类。在特征提取步骤中产生的高维特征,对分类步骤进行了重大计算。该研究提出了使用深度信仰网络(DBN)进行车辆检测的维度减少。我们试图检测汽车和摩托车。特征提取方法基于描述性方法,例如缩放不变特征变换。 DBN用于减少通过描述方法产生的高维度特征。对于分类任务,我们选择支持向量机方法。此外,UIUC数据集和我们的原始数据被选择评估所提出的方法性能。我们也将DBN与主成分分析(PCA)和其他方法进行比较。结果表明,使用DBN作为维度降低方法比PCA和车辆检测中的方法更好。

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