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An automatic image recognition system for winter road surface condition classification

机译:用于冬季路面状况分类的自动图像识别系统

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This paper investigates the feasibility of classifying winter road surface conditions using images from low cost cameras mounted on regular vehicles. RGB features along with gradients have been used as feature vectors. A Support Vector Machine (SVM) is trained using the extracted features and then used to classify the images into their respective categories. Different training schemes and their effect on the classification rate are also discussed along with the possibility of developing an automated winter road surface classification system in future.
机译:本文研究了使用安装在常规车辆上的低成本摄像机提供的图像对冬季路面状况进行分类的可行性。 RGB特征以及渐变已用作特征向量。使用提取的特征对支持向量机(SVM)进行训练,然后将其分类为各自的类别。还讨论了不同的培训方案及其对分类率的影响,以及将来开发自动冬季路面分类系统的可能性。

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