题名: |
PAVEMENT DISTRESS EVALUATION USING FUZZY LOGIC AND MOMENT INVARIANTS. |
作者: |
Chou-J; O'Neill-WA; Cheng-H |
关键词: |
PAVEMENT-DISTRESS; VIDEO-IMAGE-ANALYSIS; IMAGE-PROCESSING; FUZZY-SETS; MOMENT-INVARIANTS; ARTIFICIAL-NEURAL-NETWORKS; CLASSIFICATIONS-; ACCURACY- |
摘要: |
A novel approach of applying the theory of fuzzy sets and moment invariants to analyze pavement images in proposed in this paper. By applying the theory of fuzzy sets and calculating moment invariants from different types of distress, features are obtained. Then, a back-propagation neural network is used to classify these features. The crack density is used to obtain extent information. This approach is illustrated using randomly selected samples from NCHRP Project 1-27 video images of real cracks. Based on these samples, the feasibility of using the theory of fuzzy sets and moment invariants to classify different types of crack is proven. High accuracy of classification is also obtained. |
总页数: |
Transportation Research Record. 1995. (1505) pp39-46 (8 Fig., 4 Tab., 30 Ref.) |
报告类型: |
科技报告 |