computer vision system to automate acquiring of detailed building information
Last Updated : GMT 09:40:38
Themuslimchronicle, themuslimchronicle
Themuslimchronicle, themuslimchronicle
Last Updated : GMT 09:40:38
Themuslimchronicle, themuslimchronicle

Computer vision system to automate acquiring of detailed building information

Themuslimchronicle, themuslimchronicle

Themuslimchronicle, themuslimchronicleComputer vision system to automate acquiring of detailed building information

acquire detailed building information.
San Francisco - XINHUA

Researchers at Stanford University in northern California have developed a system using 3 dimensional (3-D) sensing technologies and a computer vision algorithm to acquire detailed building information.

Newer buildings often have computerized blueprints and records, including details such as the number of rooms, doors and windows, and the square footage of floors, ceilings and walls. But such information may not exist for older buildings, necessitating the time-consuming and difficult task of collecting these details manually for remodeling or refurbishing purposes.

The new system, presented by Stanford researchers at the Conference on Computer Vision and Pattern Recognition of the Institute of Electrical and Electronics Engineers (IEEE), which started Sunday and ended Friday, is designed to automate the process of getting detailed building information, first by using light to measure every feature of a building' s interior, room by room and floor by floor, to create a massive data file that captures the spatial geometry of any building, and then by feeding the raw data file into a new computer vision algorithm.

The algorithm identifies structural elements such as walls and columns, as well as desks, filing cabinets and other furnishings.

"Renovation projects live and die by the quality of information," according to Martin Fischer, a Stanford professor of civil and environmental engineering.

The new process is the brainchild of Stanford doctoral student Iro Armeni, with interdisciplinary oversight from Silvio Savarese, a Stanford assistant professor in computer science who leads the Computational Vision and Geometry Lab, and Fischer, who heads the Center for Integrated Facility Engineering.

"People have been trying to do this on a much smaller scale, just a handful of rooms," said Savarese. "This is the first time it's possible to do it at the scale of whole buildings, with hundreds of rooms."

Armeni, once an architect on the Greek island of Corfu, used to work on custom renovations on historical buildings hundreds of years old. She and colleagues used tape measures to redraw building plans, a practice that is both time-consuming and often inaccurate.

She began by replacing her tape measure with laser scanners and 3-D cameras, which use light to take measurements with up to millimeter accuracy. When placed inside a building, they send out pulses of light in all directions, bathing every interior surface. By recording precisely how long it takes for a beam of light to hit a given point in the room and bounce back, they create a data file consisting of literally millions of measurements, about specific points where beams of light encountered some surface. This massive data file is called a raw point cloud.

However, humans had to look at the point cloud on a computer screen to identify building elements such as windows, walls, hallways and furniture and then type that information into software tools. To the computer, the point cloud was an indistinguishable mass of data.

The Stanford team's innovation was developing a computer vision system that could analyze the point cloud for a building, distinguish the rooms, and then categorize each element in each room. This automated the second half of the process, the need for humans to annotate the data. While buildings vary in many ways, including room size, purpose and interior decoration, this is where machine learning and computer vision came in.

To train their computer vision system, the researchers collected a great amount of 3-D point cloud data that humans had annotated. These annotations specified all sorts of building features. Armeni managed the task of feeding this annotated point cloud data to the algorithm.

Through repetition, the system "learned" to recognize different building elements. Ultimately, the researchers created an algorithm that can analyze raw point cloud data from an entire building and, without human assistance, identify the rooms, enter each room, and detail the structural elements and furniture.

"This kind of geometric, contextual reasoning is one of the most innovative parts of the project," Savarese was quoted as saying by a news release from Stanford.

Armeni hopes to move and project forward and create an algorithm that can track the whole life cycle of a building - through design, construction, occupation and demolition. "As engineers, we shouldn't lose time trying to find the current status of our building," she said. "We should invest this time in doing something creative and making our buildings better."

themuslimchronicle
themuslimchronicle

Name *

E-mail *

Comment Title*

Comment *

: Characters Left

Mandatory *

Terms of use

Publishing Terms: Not to offend the author, or to persons or sanctities or attacking religions or divine self. And stay away from sectarian and racial incitement and insults.

I agree with the Terms of Use

Security Code*

computer vision system to automate acquiring of detailed building information computer vision system to automate acquiring of detailed building information

 



Themuslimchronicle, themuslimchronicle
Themuslimchronicle, themuslimchronicle
Themuslimchronicle, themuslimchronicle

GMT 09:46 2017 Sunday ,27 August

Norway fines tourist guide for scaring polar bear

GMT 07:33 2018 Monday ,08 January

CIA chief denies agency role in Iran unrest

GMT 08:55 2017 Tuesday ,15 August

Shares of Fiat Chrysler surge

GMT 00:09 2017 Friday ,27 October

Alphabet quarterly profit climbs

GMT 09:53 2017 Saturday ,08 April

Mexico inflation hits new seven-year high

GMT 18:28 2012 Friday ,09 March

All balanchine

GMT 07:09 2015 Friday ,11 December

Syria government scrapes barrel

GMT 15:57 2017 Tuesday ,24 October

2018 Olympic torch ceremony hit by poor weather

GMT 03:22 2017 Wednesday ,02 August

At least 29 killed in Afghan Shiite mosque attack
Themuslimchronicle, themuslimchronicle
Themuslimchronicle, themuslimchronicle
 
 Themuslimchronicle Facebook,themuslimchronicle facebook  Themuslimchronicle Twitter,themuslimchronicle twitter Themuslimchronicle Rss,themuslimchronicle rss  Themuslimchronicle Youtube,themuslimchronicle youtube  Themuslimchronicle Youtube,themuslimchronicle youtube

Maintained and developed by Arabs Today Group SAL.
All rights reserved to Arab Today Media Group 2023 ©

Maintained and developed by Arabs Today Group SAL.
All rights reserved to Arab Today Media Group 2023 ©

muslimchronicle muslimchronicle muslimchronicle muslimchronicle
themuslimchronicle themuslimchronicle themuslimchronicle
themuslimchronicle
بناية النخيل - رأس النبع _ خلف السفارة الفرنسية _بيروت - لبنان
themuslimchronicle, themuslimchronicle, themuslimchronicle