Upgrade & Secure Your Future with DevOps, SRE, DevSecOps, MLOps!

We spend hours on Instagram and YouTube and waste money on coffee and fast food, but won’t spend 30 minutes a day learning skills to boost our careers.
Master in DevOps, SRE, DevSecOps & MLOps!

Learn from Guru Rajesh Kumar and double your salary in just one year.

Get Started Now!

Google’s AI Teaches a Robot to Assemble and Disassemble Objects

Source: beebom.com

Google’s AI research team has developed a new machine learning system that they call “Form2Fit” in collaboration with researchers from Stanford University and Columbia University. The project makes use of deep neural networks to teach a robot arm to recognize and assemble objects.

“If robots could learn “how things fit together,” then perhaps they could become more adaptable to new manipulation tasks involving objects they have never seen before, like reconnecting severed pipes, or building makeshift shelters by piecing together debris during disaster response scenarios.”, wrote Kevin Zakka, Research Intern and Andy Zeng, Research Scientist in a blog post.

The researchers tested Form2Fit in a robot to evaluate the efficiency of the algorithm. In the test, the robot was assigned to assemble objects into a blister pack. After the testing process, the researchers noted a 94% success rate with the algorithm. Notably, the system was able to fit objects that were not seen during the training process with an 86% success rate which represents the capability of the AI.

To put it in a more technical point of view, Form2Fit uses a two-stream matching network that infers “orientation-sensitive geometric pixel-wise descriptors”. The descriptors act as compressed 3D point representations that establish a connection with object geometry, textures, and contextual task-level knowledge. The picked objects will be rotated accordingly to fit the target location, thanks to the orientation-sensitive nature of the descriptors.

Take a look at the assembly robot trained by Form2Fit in the below GIF.

In our experiments, we assume a 2D planar workspace to constrain the kit assembly task so that it can be solved by sequencing top-down picking and placing actions. This may not work for all cases of assembly – for example, when a peg needs to be precisely inserted at a 45-degree angle. It would be interesting to expand Form2Fit to more complex action representations for 3D assembly”, concluded the researchers.

Check out the research paper of this project here and let us know the potential applications that come to your mind for using this algorithm in the comments.

Related Posts

Google fires second AI ethics leader

Source – https://www.itnews.com.au/ As dispute over research, diversity grows. Google fired staff scientist Margaret Mitchell on Saturday, they both said, a move that fanned company divisions on Read More

Read More

Total and Google to launch AI tool Solar Mapper in Europe

Source: solarpowerportal.co.uk O&G giant Total and Google Cloud are launching a new artificial intelligence (AI) tool to help accelerate the deployment of residential solar panels. Together they Read More

Read More

Unlock a new career in Google Cloud with this mastery bundle

Source: androidguys.com You may not realize this, but you interact with AI technology on a consistent, if not daily basis. And if you do recognize it, chances Read More

Read More

Cloud computing is betting on outer space

Source: livemint.com Microsoft CEO Satya Nadella announced the preview of Azure Orbital at Microsoft Ignite 2020 in New Orleans. According to Microsoft, Orbital is ‘Ground Station as Read More

Read More

Google Cloud And Anaplan Innovate To Transform Enterprise Planning

Source: aithority.com Google Cloud and Anaplan, Inc. announced a strategic partnership to offer Anaplan’s platform for enterprise planning and business performance on Google Cloud. As Anaplan’s first public cloud Read More

Read More

HOW DEEPMIND ALGORITHMS HELPED IMPROVE THE ACCURACY OF GOOGLE MAPS?

Source: analyticsinsight.net DeepMind is one of the companies that are leading the AI charge and coming up with innovative uses of AI. This London-based AI lab has been Read More

Read More
Subscribe
Notify of
guest
0 Comments
Oldest
Newest Most Voted
Inline Feedbacks
View all comments
0
Would love your thoughts, please comment.x
()
x