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基于二值化图像处理的输电线路快速测距研究
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作者 韩林山 王成凤 《技术与市场》 2017年第12期3-5,共3页
针对自动巡线无人机对输电线路识别、测距实时性要求高和载荷重量轻的需求,采用160×120像数单色微型CCD摄像头,结合硬件二值化快速处理电路,对输电线路采集的25帧/秒连续图像信号进行高速数字化处理。特别设计了基于二值化图像处... 针对自动巡线无人机对输电线路识别、测距实时性要求高和载荷重量轻的需求,采用160×120像数单色微型CCD摄像头,结合硬件二值化快速处理电路,对输电线路采集的25帧/秒连续图像信号进行高速数字化处理。特别设计了基于二值化图像处理的平均线径提取算法,并对其过程与步骤进行了优化。依据标定阈值计算输出无人机相对输电线路的距离、速度等参数,作为飞控系统的巡线、避障控制依据。实际测试表面,该设计具有实时性块、载荷轻、可靠性高的特点。 展开更多
关键词 CCD 图像处理 硬件二值化 均值提取 阈值标定
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A product module mining method for PLM database 被引量:2
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作者 雷佻钰 彭卫平 +3 位作者 雷金 钟院华 张秋华 窦俊豪 《Journal of Central South University》 SCIE EI CAS CSCD 2016年第7期1754-1766,共13页
Modular technology can effectively support the rapid design of products, and it is one of the key technologies to realize mass customization design. With the application of product lifecycle management(PLM) system in ... Modular technology can effectively support the rapid design of products, and it is one of the key technologies to realize mass customization design. With the application of product lifecycle management(PLM) system in enterprises, the product lifecycle data have been effectively managed. However, these data have not been fully utilized in module division, especially for complex machinery products. To solve this problem, a product module mining method for the PLM database is proposed to improve the effect of module division. Firstly, product data are extracted from the PLM database by data extraction algorithm. Then, data normalization and structure logical inspection are used to preprocess the extracted defective data. The preprocessed product data are analyzed and expressed in a matrix for module mining. Finally, the fuzzy c-means clustering(FCM) algorithm is used to generate product modules, which are stored in product module library after module marking and post-processing. The feasibility and effectiveness of the proposed method are verified by a case study of high pressure valve. 展开更多
关键词 product design module division product module mining product lifecycle management (PLM) database
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Clustering: from Clusters to Knowledge
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作者 Peter Grabusts 《Computer Technology and Application》 2013年第6期284-290,共7页
Data analysis and automatic processing is often interpreted as knowledge acquisition. In many cases it is necessary to somehow classify data or find regularities in them. Results obtained in the search of regularities... Data analysis and automatic processing is often interpreted as knowledge acquisition. In many cases it is necessary to somehow classify data or find regularities in them. Results obtained in the search of regularities in intelligent data analyzing applications are mostly represented with the help of IF-THEN rules. With the help of these rules the following tasks are solved: prediction, classification, pattern recognition and others. Using different approaches---clustering algorithms, neural network methods, fuzzy rule processing methods--we can extract rules that in an understandable language characterize the data. This allows interpreting the data, finding relationships in the data and extracting new rules that characterize them. Knowledge acquisition in this paper is defined as the process of extracting knowledge from numerical data in the form of rules. Extraction of rules in this context is based on clustering methods K-means and fuzzy C-means. With the assistance of K-means, clustering algorithm rules are derived from trained neural networks. Fuzzy C-means is used in fuzzy rule based design method. Rule extraction methodology is demonstrated in the Fisher's Iris flower data set samples. The effectiveness of the extracted rules is evaluated. Clustering and rule extraction methodology can be widely used in evaluating and analyzing various economic and financial processes. 展开更多
关键词 Data analysis clustering algorithms K-MEANS fuzzy C-means rule extraction.
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