Sampling training data for in-cabin human detection from raw video
Abstract:
Systems and methods to efficiently and effectively train artificial intelligence and neural networks for an autonomous or semi-autonomous vehicle are disclosed. The systems and methods provide for the minimization of the labeling cost by sampling images from a raw video file which are mis-detected, i.e., false positive and false negative detections, or indicate abnormal or unexpected driver behavior. Supplemental information such as controller area network signals and data may be used to augment and further encapsulate desired images from video.
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