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Wavelet based fuzzy clustering technique for the extraction of road objects

机译:基于小波的模糊聚类技术在道路目标提取中的应用

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Detecting and recognizing road objects automatically is an important process in many applications such as traffic regulation and providing guidance for drivers and pedestrians. Fuzzy clustering using wavelets is proposed in this paper. Wavelets are used for pre-processing the image and the resulting image is then subjected to fuzzy c-means algorithm for clustering. After clustering, the image classification is done by an ensemble of multi-layer perceptron neural networks. This approach is used to classify road images into different road side objects like road, sky, and signs. A database using real-world roadside images from Transport and Main Roads (TMR) is used for evaluating the proposed approach. The results on the database using the proposed approach indicate that this approach using wavelets improves the recognition rate. This approach is compared with existing methods for segmentation and classification of road images.
机译:自动检测和识别道路物体是许多应用(例如交通管制和为驾驶员和行人提供指导)中的重要过程。本文提出了基于小波的模糊聚类。小波用于图像预处理,然后对所得图像进行模糊c均值算法进行聚类。聚类后​​,通过多层感知器神经网络的集成来完成图像分类。该方法用于将道路图像分类为不同的道路侧对象,例如道路,天空和标志。使用来自运输和主要道路(TMR)的真实世界路边图像的数据库用于评估所提出的方法。使用所提出的方法在数据库上的结果表明,这种使用小波的方法可以提高识别率。将该方法与现有的道路图像分割和分类方法进行了比较。

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