Robotic Grasping of Novel Objects
Saxena, Ashutosh, Driemeyer, Justin, Kearns, Justin, Ng, Andrew Y.
–Neural Information Processing Systems
We consider the problem of grasping novel objects, specifically ones that are being seenfor the first time through vision. We present a learning algorithm that neither requires, nor tries to build, a 3d model of the object. Instead it predicts, directly as a function of the images, a point at which to grasp the object. Our algorithm istrained via supervised learning, using synthetic images for the training set. We demonstrate on a robotic manipulation platform that this approach successfully graspsa wide variety of objects, such as wine glasses, duct tape, markers, a translucent box, jugs, knife-cutters, cellphones, keys, screwdrivers, staplers, toothbrushes, a thick coil of wire, a strangely shaped power horn, and others, none of which were seen in the training set.
Neural Information Processing Systems
Dec-31-2007