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Reliable vehicle type classification by Classified Vector Quantization

机译:通过分类矢量量化对车辆类型进行可靠的分类

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摘要

A working vehicle detection and classification system is proposed in this paper. The vehicle detection is implemented by a multiple layer perceptrons (MLP) ensemble using Haar-like features. To address the classification reliability issue, a prototype based scheme, called Classified Vector Quantization (CVQ), was applied for vehicle classification. By CVQ, each data category is represented by its own codebook, which can be implemented by some efficient neural learning algorithms, for example, the self-organizing map (SOM) and neural ‘gas’ algorithm. In classification process, each codebook offers a generalized ‘nearest neighbor’ by a population decoding principle to be compared with the input data. The advantage of CVQ is its convenience to provide reliable classification using the embedded rejection option. Experiments demonstrated the efficiency for vehicle classification task. The scheme offers a performance of accuracy over 95% with a rejection rate 8% and reliability over 98% with a rejection rate 20%. This exhibits promising potentials for real-world applications.
机译:提出了一种工作车辆检测与分类系统。车辆检测是通过使用Haar类特征的多层感知器(MLP)集成实现的。为了解决分类可靠性问题,将基于原型的方案称为分类矢量量化(CVQ),用于车辆分类。通过CVQ,每个数据类别都由自己的密码本表示,可以通过一些有效的神经学习算法来实现,例如自组织映射(SOM)和神经“ gas”算法。在分类过程中,每个密码本都根据总体解码原理提供广义的“最近邻居”,以便与输入数据进行比较。 CVQ的优势在于它方便使用嵌入式拒绝选项提供可靠的分类。实验证明了车辆分类任务的效率。该方案的准确度超过95%,拒绝率为8%,可靠性超过98%,拒绝率为20%。这为现实应用展示了广阔的潜力。

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