Which of the following demonstrate the benefit of perceptual intelligence (in humans) versus artificial Intelligence (of machines)? All of these Inability to identify objects as continuous if they are occluded by another object Changes in illumination of one object are perceived as separate objects Experiment on perception of words "Big Earl" and "big girl" in context Inability to identify an object as being the same when angle of view is changed
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