标题: 使用HOG-SVM架构的交通标志辨识
Traffic Sign Recognition Using HOG and SVM
作者: 陈治戎
杭学鸣
Chen, Chih-Jung
Hang, Hsueh-Ming
电子工程学系 电子研究所
关键字: 交通标志辨识;特征撷取;机器学习;Traffic sign recognition;Feature extraction;Machine learning
公开日期: 2016
摘要: 近年来驾驶人辅助系统逐渐成为现代车辆的流行配件,而且对将来的自主车辆来说也是不可或缺的元件。一个进阶的驾驶人辅助系统可以自动侦测环境并且提供导航。自动交通标志辨识为一个用在进阶驾驶人辅助系统的科技。交通标志有一些特征使得它们能简单地被人们侦测与辨识。它们有着特定的形状与颜色。而且它们通常会垂直地放置在一定的高度并面对着来车的方向,所以在拍摄的影像中它们的旋转及几何变化更能被预测。
在这篇论文里,我们提供了一个交通标志辨识的方法,使用被很多的物件辨识程序证明为有效且运算上也很有效率的两种特征,分别是Histogram of Oriented Gradients (HOG)跟Gabor特征。我们采用线性SVM做为分类的方法,使用这两个影像特征的性能进行模拟与比较。
我们也减少特征数量以加速运算的时间,发现在不影响准确率太多的情形下,运算时间能显着地降低。在一些情形下,适当地减少特征甚至能增加准确率。我们研究了成功与失败的例子以了解其原因。我们的观察成为本论文中不可或缺的一部分。收集足够数量的训练资料是机器学习系统的一个瓶颈。因此,我们基于一些收集到的样本去合成训练资料。我们用真实的测试资料评估这种方法的性能。到目前为止,我们的合成训练资料产生的系统效果较差。 
In recent years, driver assistance system becomes an increasing popular component of a modern vehicle and its elements are essential for future autonomous car. An Advanced Driver Assistance System (ADAS) can detect the environment and provide navigation automatically. One technology used in ADAS is automatic traffic sign recognition. Traffic signs have a few features so that they can be easier to detect and identify by human beings. They have specific shapes and colors. And they are usually placed vertically at certain height and facing the incoming car direction. Thus, their rotation and geometric variations in the captured images are more predictable.
In this thesis, we propose a traffic sign recognition method, using two features which have been demonstrated effective in many object recognition applications and are rather efficient in computation. They are the Histogram of Oriented Gradients (HOG) feature and the Gabor filter feature. We adopt a linear support vector machine (SVM) for object classification. The performance of using these two image features are simulated and compared.
We also reduce the feature number to improve the computing time. We found that without affecting the accuracy much, the computation time can be reduced significantly. In some cases, the proper feature reduction can even increase the accuracy. We study the successful and failure cases to understand the reasons. Our observations become an indispensable part of this thesis. To collect sufficient amount of training data is one bottleneck of a machine learning system. We thus synthesize the training data based on a few collected samples. We evaluate the performance of this approach on the real test data. So far, our synthesized training data produce less effective system.
URI: http://etd.lib.nctu.edu.tw/cdrfb3/record/nctu/#GT070250272
http://hdl.handle.net/11536/141073
显示于类别:Thesis