Why Computer Vision is a Hard Problem (TensorFlow in Practice)
Key Takeaways
Explains why computer vision is a hard problem
Full Transcript
you know one of the non-intuitive things about vision is that is so easy for a person to look at you and say oh you're wearing a shirt it's so hard for computer to figure out and because it's so easy for humans that recognize objects is almost difficult to understand why this is a complicated thing for a computer to do you know what the computer has to do is look at all level all numbers all the pixel brightness value say and look at all these numbers say oh these numbers correspond to a black shirt and it's amazing that with machiner and deep learning computers are getting really good at this right
Original Description
It’s easy for humans to tell the difference between a shirt and shoes, but not so easy for a computer. Andrew and Laurence explain why in Course 1 of our TensorFlow in Practice Specialization, available for $49 or to audit for free!
Take the TensorFlow in Practice Specialization: http://bit.ly/38LojcE
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