Enhanced Mean Load Based Clustering Technique On Dented Image Segments In Reconstruction Of Buildings

D. Neguja, A. Rajan
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Abstract

The need of an updated clustering technique for rebuilding the damage of available buildings is required and found as a very complicated task for both financial and manpower needs. The new segments does not reach the present segments' potential. So there is a coercion occurs to invent a new clustering technique that suits both construction engineer and the consumers. This effort is one of the destitute fact of usual clustering algorithm. The aim of this research is to produce a better clustering technique for the existing entities from damaged buildings. Finding a new clustering technique from damaged segments of buildings such as bricks and steels and then reutilize them for rebuilding. This process is challenging for engineers to reprocess the damaged segments for construction by the restructuring with the improved potential. This paper proposes a new clustering algorithm that directs the engineers to reutilize the existing damaged units and enables reutilization, cost beneficiary, reduces work pressure of construction. The damaged segments of the images are collected based on load then the firmness of mean load of the segment is identified for clustering according to the nearest firmness in mean load point for restructuring. This paper guides a reorganized clustering of enhanced firmness in mean load and clustering of segments which are formed from damaged building segments. This work enables the improved firmness in mean load clustering method in order to find more clusters on damaged building segments. The destination of nearest segments is considered as midpoint used as a mean point for clustering. The algorithm is designed by means of unsupervised learning process
基于平均载荷的增强凹痕图像聚类技术在建筑物重建中的应用
需要一种更新的聚类技术来重建现有建筑物的损坏,并且发现这是一项非常复杂的任务,既需要资金又需要人力。新的细分市场没有达到现有细分市场的潜力。因此,有必要发明一种既适合建筑工程师又适合消费者的聚类技术。这是一般聚类算法的不足之处。本研究的目的是为了对受损建筑物的现有实体产生更好的聚类技术。从建筑物的损坏部分(如砖和钢)中寻找一种新的聚类技术,然后重新利用它们进行重建。这一过程对工程师来说是一个挑战,即通过重组来提高潜力,对损坏的部分进行再加工。本文提出了一种新的聚类算法,指导工程师对现有的损坏单元进行再利用,实现再利用,成本效益好,减轻施工工作压力。基于载荷对图像的损伤片段进行采集,然后根据最近的平均载荷点的强度来识别片段的平均载荷强度进行聚类,进行重构。本文指导了一种平均荷载增强强度的重组聚类方法和由损坏的建筑分段组成的分段聚类方法。该研究提高了平均荷载聚类方法的牢固性,以便在受损建筑段上找到更多的聚类。将最近段的目的地作为聚类的中点,作为聚类的均值。该算法采用无监督学习过程设计
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