For those of you interested in learning more about embedded vision, I recommend the website of the Embedded Vision Alliance, www.embedded-vision.com, which contains extensive free educational materials.
For those who want to do some easy and fun hands-on experiments with embedded vision first-hand, try the BDTI OpenCV Executable Demo Package (for Windows), available at www.embedded-vision.com/platinum-members/bdti/embedded-vision-training/downloads/pages/introduction-computer-vision-using-op
And for those who want to start developing their own vision algorithms and applications using OpenCV, the BDTI Quick-Start OpenCV Kit (which runs under the VMware player on Windows, Mac, or Linux) makes it easy to get started: www.embedded-vision.com/platinum-members/bdti/embedded-vision-training/downloads/pages/OpenCVVMWareImage
Robots that walk have come a long way from simple barebones walking machines or pairs of legs without an upper body and head. Much of the research these days focuses on making more humanoid robots. But they are not all created equal.
The IEEE Computer Society has named the top 10 trends for 2014. You can expect the convergence of cloud computing and mobile devices, advances in health care data and devices, as well as privacy issues in social media to make the headlines. And 3D printing came out of nowhere to make a big splash.
For industrial control applications, or even a simple assembly line, that machine can go almost 24/7 without a break. But what happens when the task is a little more complex? That’s where the “smart” machine would come in. The smart machine is one that has some simple (or complex in some cases) processing capability to be able to adapt to changing conditions. Such machines are suited for a host of applications, including automotive, aerospace, defense, medical, computers and electronics, telecommunications, consumer goods, and so on. This discussion will examine what’s possible with smart machines, and what tradeoffs need to be made to implement such a solution.