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- Paul M. Churchland (1995). Machine Stereopsis: A Feedforward Network for Fast Stereo Vision with Movable Fusion Plane. In Android Epistemology. Cambridge: MIT Press.
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The essays in this volume represent the first steps by philosophers and artificial intelligence researchers toward explaining why it is necessary to add an ...
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