Abstract
This chapter introduces issues in long-range facial image acquisition and measures for image quality and their usage. Section 7.1 on image acquisition for face recognition discusses issues in lighting, sensor, lens, blur issues, which impact shortrange biometrics but are more pronounced in long-range biometrics. Section 7.2 introduces the design of controlled experiments for long-range face and why they are needed. Section 7.3 introduces some of the weather and atmospheric effects that occur for long-range imaging, with numerous of examples. Section 7.4 addresses measurements of “system quality,” including image-quality measures and their use in prediction of face recognition algorithm. This section also introduces the concept of failure prediction and techniques for analyzing different “quality” measures. The section ends with a discussion of post-recognition “failure prediction” and its potential role as a feedback mechanism in acquisition. Each section includes a collection of open-ended questions to challenge the reader to think about the concepts more deeply. For some of the questions we answer them after they are introduced; others are left as an exercise for the reader.
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Boult, T.E., Scheirer, W. (2009). Long-Range Facial Image Acquisition and Quality. In: Tistarelli, M., Li, S.Z., Chellappa, R. (eds) Handbook of Remote Biometrics. Advances in Pattern Recognition. Springer, London. https://doi.org/10.1007/978-1-84882-385-3_7
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DOI: https://doi.org/10.1007/978-1-84882-385-3_7
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