Summary: | 碩士 === 國立交通大學 === 電機與控制工程系所 === 95 === Traffic information detection and adaptive traffic signal control are vital to the development of intelligent transportation system. The cycle length of a traffic signal controller can be adjusted dynamically by applying gathered traffic information to adaptive traffic signal control at the isolated intersection, thus the traffic jams can be reduced. Detecting traffic information by use of image processing has become a trend, however, most of the previous research use microscopic measurement, which is unnecessary in application to adaptive traffic signal control. For adaptive traffic signal control system, the topic of optimal cycle is rarely considered since it has various lengths in each cycle; therefore, a very phase could have an overlong phase time. In view of this, an efficient image processing algorithm is proposed to estimate traffic flow in this thesis. In addition, an adaptive traffic signal control system that takes optimal cycle into account is presented.
The contributions of this thesis may be summarized as follows. First, the relation of the number of foreground pixels and the number of foreground objects can be obtained by using perspective transformation. With the pre-constructed ellipse human template, the number of pedestrian on a crosswalk can be estimated approximately. Second, use the method mention above together with texture analysis of an image, the traffic flow can be normalized and represented by a number between 0 and 1. Third, a fuzzy adaptive traffic controller based on fuzzy inference system is proposed. The design of the system also takes optimal cycle and relative saturation degree of different roads into consideration. The image processing algorithm and fuzzy traffic signal controller have been tested in various situations; the system shows promise and the experiment results are satisfactory.
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