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Component level three dimensional model building method of bayesian network constraint

A Bayesian network, three-dimensional model technology, applied in the field of clothing modeling and computer-aided design, can solve the problems of heavy workload, long time, difficult to generate three-dimensional models, etc., to achieve the effect of easy operation and wide application

Active Publication Date: 2015-10-28
BEIHANG UNIV
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AI Technical Summary

Problems solved by technology

However, under the current circumstances, it is difficult to generate 3D models. Professionals are required to use professional 3D design software. The threshold is high, time-consuming, and heavy workload. It is even more difficult for ordinary users to generate 3D models of target objects and then realize 3D printing.

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  • Component level three dimensional model building method of bayesian network constraint
  • Component level three dimensional model building method of bayesian network constraint
  • Component level three dimensional model building method of bayesian network constraint

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Embodiment Construction

[0021] The present invention will be further described below in conjunction with the accompanying drawings.

[0022] see figure 1 , is a schematic diagram of the overall design structure of the method of the present invention, and the method includes 4 stages: (1) building a three-dimensional model component library; (2) acquiring the three-dimensional point cloud of the target object; (3) building the shell between the model components (4) Selection and assembly of 3D model components.

[0023] Step (1), building a three-dimensional model component library. refer to figure 2 , the present invention employs professional designers to construct a three-dimensional model parts library for common models, and finally builds a 3D library with 2000 model parts. All model parts are combined with the shape characteristics of real model parts, and a large number of data used by real manufacturers to produce actual models are collected. Using professional model virtual design softwar...

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Abstract

The present invention discloses a component level three dimensional model building method of bayesian network constraint. The method comprises the following steps of firstly, placing a target object on a turntable rotating slowly, using a Kinect to scan the target object to obtain a RGBD data sequence, and generating an initial three dimensional point cloud by combining a depth image fusion algorithm (KinectFusion); secondly, utilizing an interactive segmenting tool to modify the initial three dimensional point cloud to remove a noisy point and the redundant part; on the basis, utilizing a trained bayesian network to carry out the component segment on the three dimensional point cloud, automatically selecting a component model according with the requirement from a three dimensional model component base for each segmented component, registering a candidate three dimensional component to the model three dimensional point cloud by utilizing a non-rigid deformation algorithm, calculating the fitting degree of the candidate three dimensional component, and further selecting an optimal three dimensional component; finally, automatically splicing the optimal three dimensional component by utilizing a conformal deformation algorithm, and fitting to the model three dimensional point cloud in a deformation manner to obtain the three dimensional model possessing the component semantics finally.

Description

technical field [0001] The invention relates to the fields of clothing modeling and computer-aided design, in particular to a component-level three-dimensional model construction method constrained by a Bayesian network. Background technique [0002] Computer-aided design (Computer Aided Design, referred to as CAD) refers to the use of computers and graphics equipment to assist designers in design work. The traditional industrial design process needs to deal with a large number of design schemes, and there are generally situations where the design is difficult, the cycle is long and the waste of resources is serious. Utilizing the computer-aided design process can save design costs and free designers from tedious tasks. After the designer gives the design sketch, the computer can turn the design sketch into an engineering sample drawing, and visualize the result, which is convenient for the designer to make rapid iterative modifications. [0003] Virtual reality (Virtual R...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06T17/00G06F17/50
Inventor 周彬陈小武赵沁平毕浪卢飞翔王林
Owner BEIHANG UNIV
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