Abstract
This paper presents a new approach to face recognition, combining the techniques of computer vision and machine learning. A steady improvement in recognition performance is demonstrated. It is achieved by learning individual faces in terms of the local shapes of image boundaries. High-level facial features, such as nose, are not explicitly used in this scheme. Several machine learning methods are tested and compared. The overall objectives are formulated as follows: Classify the different tasks of “face recognition” and suggest an orderly terminology to distinguish between them. Design a set of easily and reliably obtainable descriptors and their automatic extraction from the images. Compare plausible machine learning methods; tailor them to this domain. Design experiments that would best reflect the needs of real world applications, and suggest a general methodology for further research. Perform j the experiments and compare the performance. © 1994 Taylor & Francis Group, LLC.
Cite
CITATION STYLE
Spacek, L., Kubat, M., & Flotzinger, D. (1994). Face recognition through learned boundary characteristics. Applied Artificial Intelligence, 8(1), 131–145. https://doi.org/10.1080/08839519408945436
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