Extra-label information: experiments with view-based classification
نویسندگان
چکیده
Extra information is often readily available but not utilized in a classification paradigm. Here we explore using extra labels (profile faces and rotated faces) to aid in distinguishing faces versus non-faces. We propose a way to combine simple discriminant classifiers to build a more complex ones and justify the combination in a probabilistic setting.
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