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1 Andrew Ng, Associate Professor of Computer Science Robots and Brains.

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Presentation on theme: "1 Andrew Ng, Associate Professor of Computer Science Robots and Brains."— Presentation transcript:

1 1 Andrew Ng, Associate Professor of Computer Science Robots and Brains

2 2 Who wants a robot to clean your house? [Photo Credit: iRobot]

3 3 Stanford STAIR Robot [Credit: Ken Salisbury]

4 4

5 5 What’s missing? Control Perception The software

6 6 Stanford autonomous helicopter

7 7 Computer GPS Accelerometers Compass

8 8

9 9 Computer program to fly helicopter [Courtesy of David Shim]

10 10 Option 1 BLACK

11 11 Machine learning Option 2

12 12 Machine learning

13 13 Machine learning to fly helicopter

14 14 What’s missing? The software Control Perception

15 15 “Robot, please find my coffee mug”

16 16 “Robot, please find my coffee mug” Mug

17 17 Why is computer vision hard? But the camera sees this:

18 18 Computer programs (features) for vision SIFT Spin image HoG Textons Shape context GIST

19 19 Why is speech recognition hard? What a microphone records: “Robot, please find my coffee mug.”

20 20 Computer programs (features) for audio ZCR Spectrogram MFCC Rolloff Flux

21 21 The idea: Most of perception in the brain may be one simple program

22 22 Auditory cortex learns to see Auditory Cortex The “one program” hypothesis [Roe et al., 1992]

23 23 Somatosensory cortex learns to see The “one program” hypothesis Somatosensory Cortex [Roe et al., 1992]

24 24 Neurons in the brain

25 25 Neural Network x1x1 x2x2 x3x3 Output Layer L 1 Layer L 2 Layer L 4 Layer L 3 x4x4

26 26 How does the brain process images? Neuron #1 of visual cortex (model) Neuron #2 of visual cortex (model) Primary visual cortex looks for “edges.”

27 27 Comparing to Biology Learning algorithm Visual cortex [PICTURE]

28 28 Comparing to Biology Learning algorithm Auditory cortex [PICTURE]

29 29 Computer vision results (NORB benchmark) Neural Network: accuracy Classical computer vision (SVM): accuracy

30 30 Missed Mugs True positivesFalse positives

31 31 Missed Mugs True positivesFalse positives

32 32 Missed Mugs True positivesFalse positives

33 33 Missed Mugs True positivesFalse positives

34 34 Missed Mugs True positivesFalse positives Results using non-embodied vision

35 35 Missed Mugs True positivesFalse positives

36 36 Missed Mugs True positivesFalse positives Results using non-embodied vision

37 37 Missed Mugs True positivesFalse positives Classifications using embodied agent

38 38 Missed Mugs True positivesFalse positives

39 39 Missed Mugs True positivesFalse positives Results using non-embodied vision

40 40 Missed Mugs True positivesFalse positives

41 41 Missed Mugs True positivesFalse positives

42 42 Hope of progress in Artificial Intelligence Email: ang@cs.stanford.edu

43


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