This is an interdisciplinary field of research involving the use of neural network techniques for image recognition applied to tasks in the area of ...
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We have examined the performance of different neural networks in traditional image recognition tasks and in problems that appear in micromechanical ...
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We have examined the performance of different neural networks in traditional image recognition tasks and in problems that appear in micromechanical ...
Micromechanical manufacturing based on microequipment creates new possibi- ties in goods production. If microequipment sizes are comparable to the sizes of the microdevices to be produced, it is possible to decrease the cost of production... Google Books
Originally published: December 7, 2009
Authors: Donald Wunsch, Tetyana Baydyk, and Ernst Kussul
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