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用AI提升AI,AIstructure-Copilot-V0.4.0前处理全新智能化升级

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AIstructure-Copilot V0.4.0隆重推出两大新功能:

(1) 深度学习支撑的建筑CAD图纸信息智能识别和提取功能,一键识别CAD图纸信息(图1);

(2) 保姆级程序操作界面升级,每个窗口都提供“帮助”按钮,随时呼叫软件说明(图2)。


 

图1 一键识别CAD图纸信息

 

图2 保姆级帮助指引


今天先重点介绍第一个新功能:建筑CAD图纸信息智能识别和提取功能。诚邀大家广泛试用,并给我们提出宝贵意见。其他新功能的介绍请听下回分解。


1

V0.4.0版本的AI智能识图功能

AIstructure-Copilot上线以来,我们一直密切关注用户的反馈。听到最多的意见就是如何能够提升AIstructure-Copilot的前处理能力,即如何把工程CAD图纸尽可能便捷的加工成AI智能设计可以处理的输入数据。

V0.3.9及以前的版本中,我们的前处理解决方案是基于“图层识别”的技术路线,就是通过人机交互处理CAD图纸,获得门、窗、墙、阳台等与智能设计密切相关的图层信息,形成智能设计的输入数据。虽然这套方法在我们自己的测试案例中效果很好,但是随着智能设计软件的推广使用,还是遇到了不少问题。最主要的问题就是很多工程CAD图纸的图层信息比较混乱,基于图层获取构件信息经常会失败,这也成为AIstructure-Copilot最常遇到的用户反馈问题。

很多工程师对我们提出需求:有没有可能做到无论建筑CAD图纸的图层信息多么混乱,AIstructure-Copilot都能一键识别呢?

要满足上述需求,只有借助于AI手段了。于是我们改变了此前基于图层的构件识别技术路线,在V0.4.0版本中隆重推出新开发的基于深度学习的智能识图功能,实现建筑CAD图纸一键识别。


2

AI智能识图的操作流程

AIstructure-Copilot-V0.4.0版本的操作流程如以下视频所示,用户直接框选CAD图纸中的待设计建筑平面图,AI就可以一键识别门、窗、阳台等各种不同的构件和空间信息。在智能识别完成后,软件会标出可能存在问题的构件,并给出推荐解决方案,请工程师进行复查和处理。

 


3

新旧版本效果对比

我们选取了一个较为复杂的建筑平面图(图3a),新旧版本的处理效果如图3b和图3c所示。可以看出,由于该CAD图纸的图层不规范,导致旧版本在识别构件的时候局部有缺失(图3b),新版本可以一键智能识别所有构件(图3c)。


 

(a)建筑平面图

 

(b)旧版本的识别结果

 

(c)新版本的识别结果

图3 案例对比


4

结语

AIstructure-Copilot-V0.4.0版本进行了全面升级,新增AI智能识图功能,一键识别CAD图纸信息,并在每个窗口都提供了“帮助”按钮,用户可以随时呼叫软件说明。


后续,我们还将不断完善相关产品功能。欢迎大家持续关注我们的工作,多多支持!

   

温馨提示:为更好使用AI设计工具,请仔细阅读使用说明书(https://ai-structure.com)

--End--

来源:陆新征课题组
ACTSystem二次开发建筑材料人工智能
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首次发布时间:2025-09-18
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