In our class lecture we did PEAS for a self-driving car. Using a similar logic what is PEAS for Face Recognition System?
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In our class lecture we did PEAS for a self-driving car. Using a similar logic what is PEAS for
Face Recognition System?
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- 1 application on pattern recognition and corresponding basic model. full explanationExplain what the Named Entity Recognition software is and what it is meant to do in its first few minutes.In the context of the reference phenomenon, can you describe Hobb's algorithm as well as centering algorithms?Is it possible to tell the difference between pattern recognition verification and recognition?
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