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An investigative approach towards various image segmentation algorithms used for traffic sign recognition

机译:用于交通标志识别的各种图像分割算法的调查方法

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As far as the safety of a driver is concerned, more focus should be put on correct interpretation and information which is conveyed by a traffic sign, while driving a vehicle along the road. A sign board can be thought of as an emblem which disseminates important and meaningful information regarding the potential hazards prevailing among road users comprising roadways cladded with snowfall, construction worksites or repairing of roads taking place and telling the people to follow an alternative route. It alerts the person who is passing through the road about the maximum possible extremity that his vehicle is trying to achieve indicating slowing down the speed of vehicle since chances of having collision cannot be ruled out. With constant increasing of the training database size, not only the recognition accuracy, but also the computation complexity should be considered in designing a feasible recognition approach. The traffic sign images were acquired from the image database and were subjected to some pre-processing techniques such as applying Histogram of Oriented Gradients algorithm which consists of extraction of the HOG features from an image with the help of cell size as well as around the corner points and contrast stretching of color images that are present in the image database. In the future, we will concentrate on detecting, recognizing as well as classifying a particular sign board.
机译:就驾驶员的安全而言,应更加重点放在正确的解释和由交通标志传达的信息,同时沿着道路驾驶车辆。签收董事会可以被认为是一个徽章,它传播有关道路用户普遍存在的潜在危害的重要信息,包括巷道,搭乘降雪,建筑工程或修理道路,并告诉人们遵循另类路线。它提醒那些通过道路的人有关他的车辆正在努力实现的最大可能肢体,以实现速度减慢车辆的速度,因为无法排除碰撞的机会。随着训练数据库规模的不断增加,不仅识别准确性,而且应该考虑设计可行识别方法的计算复杂性。从图像数据库中获取交通标志图像,经受一些预处理技术,例如应用面向梯度算法的直方图,该梯度算法包括在电池尺寸以及拐角处提取来自图像的HOG特征。图像数据库中存在的彩色图像的点和对比度拉伸。在未来,我们将专注于检测,识别和分类特定的牌栏。

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