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Statistical Optimization for Geometric Computation: Theory and Practice (Dover Books on Mathematics)

Author Kenichi Kanatani, Mathematics
Publisher Dover Publications
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Book Details
ISBN / ASIN0486443086
ISBN-139780486443089
MarketplaceFrance 🇫🇷

Description

This text for graduate students discusses the mathematical foundations of statistical inference for building three-dimensional models from image and sensor data that contain noise--a task involving autonomous robots guided by video cameras and sensors.
The text employs a theoretical accuracy for the optimization procedure, which maximizes the reliability of estimations based on noise data. The numerous mathematical prerequisites for developing the theories are explained systematically in separate chapters. These methods range from linear algebra, optimization, and geometry to a detailed statistical theory of geometric patterns, fitting estimates, and model selection. In addition, examples drawn from both synthetic and real data demonstrate the insufficiencies of conventional procedures and the improvements in accuracy that result from the use of optimal methods.