10 signs on the neural-net-based ADAS road
Every day I read stuff about the coming of fully autonomous vehicles, and it’s not every day we get a technologist’s view of the hurdles faced in getting there. Chris Rowen, CTO of Cadence's IP group, gave one of the best presentations I’ve seen on ADAS technology and convolutional neural networks (CNNs) at #53DAC, pointing toward 10 signs on the road ahead.
Rowen’s list, with his talking points and my comments interspersed, cuts to the chase. I really appreciated this wasn’t a hard-core product pitch but a very thoughtful problem and opportunity discussion.
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