AUTOMATIC PAVEMENT-DISTRESS-SURVEY SYSTEM

被引:35
|
作者
FUKUHARA, T
TERADA, K
NAGAO, M
KASAHARA, A
ICHIHASHI, S
机构
[1] System Engrg. Lab., Komatsu Ltd., Hiratsuka, Kanagawa, 254
[2] Dept. of Electrical Engrg., Kyoto Univ., Sakyo-Ku, Kyoto, 606, Yoshida-Hon-Machi
[3] Dept. of Civ. Engrg., Hokkaido Inst. of Tech., TeineKu, Sapporo, 006
[4] Road Engrg. Dept., Nichireki Chemical Industry Co. Ltd., Chiyoda-Ku, Tokyo, 102
来源
关键词
D O I
10.1061/(ASCE)0733-947X(1990)116:3(280)
中图分类号
TU [建筑科学];
学科分类号
0813 ;
摘要
An automatic pavement-distress-survey system that uses laser, video, and image processing techniques has recently been developed. This system consists of a survey vehicle and a data-processing system. The survey vehicle can measure cracking, rutting, and longitudinal profile simultaneously, without contact, rapidly and accurately. The data-processing system can convert the measured data automatically into formats that can be used in the pavement data bank. As for cracking, cracks over 1 mm wide can be measured, and it is easy to output the various parameters calculated from length, width, direction, position and number of cracks. The cracking processor uses a unique line-finding algorithm that can extract a crack in a noisy road image by analysis of projection curves. This algorithm is implemented in special-purpose high-speed hardware. In this hardware, up to 512 32-bit microprocessors execute in parallel. This system allows automatic crack recognition that has conventionally only been performed by humans. © ASCE.
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页码:280 / 286
页数:7
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