Research on intelligent design algorithm of indoor space based on hybrid recommendation model

Huaxue He
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Abstract

Looking at the traditional interior space design industry, the traditional design method is mainly manual design and the use of interactive modeling software and its design process mainly relies on trial and error. This paper takes the interior space design software platform as the background to study the collocation recommendation algorithm of the 3D home model, aim at improve the efficiency of the intelligent design algorithm. The recommendation idea of collaborative filtering is simple to implement, does not need to consider the inherent attribute characteristics of three-dimensional home projects, and is fast to calculate. After constructing the image feature database, this article uses the similarity between images to measure the visual similarity of the indoor space model; uses similar home projects to predict the collocation data of adjacent projects, and densifies the sparse collocation data; constructs each image separately Feature database, and use this to build its similarity table. According to the similarity table corresponding to each item, the first simNum items of the same category that are similar to the current item can be found. The experimental results show that compared with the traditional algorithm, the algorithm in this paper has greatly improved the accuracy of collocation recommendation.
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基于混合推荐模型的室内空间智能设计算法研究
纵观传统的室内空间设计行业,传统的设计方法主要是手工设计和使用交互式建模软件,其设计过程主要依靠试错。本文以室内空间设计软件平台为背景,研究三维家居模型的搭配推荐算法,旨在提高智能设计算法的效率。协同过滤的推荐思想实现简单,无需考虑三维家居项目的固有属性特征,计算速度快。本文在构建图像特征数据库后,利用图像间的相似度来度量室内空间模型的视觉相似度;利用相似的家居项目预测相邻项目的搭配数据,并对稀疏的搭配数据进行加密度处理;分别构建每幅图像的特征数据库,并以此构建其相似度表。根据每个项目对应的相似性表,可以找到与当前项目相似的同类项目的前 simNum 项目。实验结果表明,与传统算法相比,本文算法大大提高了搭配推荐的准确性。
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