首页> 外文会议>Intelligent Transportation Systems, 2000. Proceedings. 2000 IEEE >Local-feature based vehicle class recognition in infra-red images using IMAP parallel vision board
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Local-feature based vehicle class recognition in infra-red images using IMAP parallel vision board

机译:使用IMAP并行视觉板在红外图像中基于局部特征的车辆类别识别

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This paper describes a method for classifying vehicle types, for example, small vehicles, sedans, and buses. For this classification, our system, based on local-feature configuration, needs many local features; thus it employs infrared images to enable us to use the same algorithm both day and night, and to eliminate concern about colors of vehicles. The algorithm is based on our previous work, which is a generalization of the eigenwindow method. This method has the following three advantages: (1) It cast detect even in cases where parts of the vehicles are occluded. (2) It can detect even if vehicles are translated due to running out of the lanes. (3) It does not require us to segment vehicle areas from input images. We developed a vehicle segmentation system using B-snake technique to obtain many training images. We then implemented our algorithm on the IMAP-vision board in order to verify the above advantages of our vehicle classification method by performing outdoor experiments.
机译:本文介绍了一种对车辆类型进行分类的方法,例如,小型车辆,轿车和公共汽车。对于此分类,我们的系统基于本地功能配置,需要许多本地功能。因此,它利用红外图像使我们能够在白天和黑夜使用相同的算法,并消除了对车辆颜色的担忧。该算法基于我们以前的工作,它是特征窗口方法的概括。该方法具有以下三个优点:(1)即使在部分车辆被遮挡的情况下,它也可以进行检测。 (2)即使由于车道不足而平移车辆,也可以进行检测。 (3)不需要我们从输入图像中分割车辆区域。我们开发了一种使用B型蛇技术的车辆分割系统,以获得许多训练图像。然后,我们在IMAP视觉板上实施了我们的算法,以通过进行户外实验来验证我们的车辆分类方法的上述优势。

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