Hinders, Mark K.
Intelligent Feature Selection for Machine Learning Using the Dynamic Wavelet Fingerprint [electronic resource] / by Mark K. Hinders. - 1st ed. 2020. - XIV, 346 p. 208 illus., 143 illus. in color. online resource.
Background and history -- Intelligent structural health monitoring with ultrasonic lamb waves -- Automatic detection of flaws in recorded music -- Pocket depth determination with an ultrasonographic periodontal probe -- Spectral intermezzo: Spirit security systems -- Lamb wave tomographic rays in pipes -- Classification of RFID tags with wavelet fingerprinting -- Pattern classification for interpreting sensor data from a walking-speed robot -- Cranks and charlatans and deepfakes.
This book discusses various applications of machine learning using a new approach, the dynamic wavelet fingerprint technique, to identify features for machine learning and pattern classification in time-domain signals. Whether for medical imaging or structural health monitoring, it develops analysis techniques and measurement technologies for the quantitative characterization of materials, tissues and structures by non-invasive means. Intelligent Feature Selection for Machine Learning using the Dynamic Wavelet Fingerprint begins by providing background information on machine learning and the wavelet fingerprint technique. It then progresses through six technical chapters, applying the methods discussed to particular real-world problems. Theses chapters are presented in such a way that they can be read on their own, depending on the reader’s area of interest, or read together to provide a comprehensive overview of the topic. Given its scope, the book will be of interest to practitioners, engineers and researchers seeking to leverage the latest advances in machine learning in order to develop solutions to practical problems in structural health monitoring, medical imaging, autonomous vehicles, wireless technology, and historical conservation.
9783030493950
10.1007/978-3-030-49395-0 doi
Signal processing.
Biomedical engineering.
Materials—Analysis.
Control engineering.
Robotics.
Automation.
Computer science.
Signal, Speech and Image Processing .
Biomedical Engineering and Bioengineering.
Materials Characterization Technique.
Control, Robotics, Automation.
Computer Science.
TK5102.9
621.382
Intelligent Feature Selection for Machine Learning Using the Dynamic Wavelet Fingerprint [electronic resource] / by Mark K. Hinders. - 1st ed. 2020. - XIV, 346 p. 208 illus., 143 illus. in color. online resource.
Background and history -- Intelligent structural health monitoring with ultrasonic lamb waves -- Automatic detection of flaws in recorded music -- Pocket depth determination with an ultrasonographic periodontal probe -- Spectral intermezzo: Spirit security systems -- Lamb wave tomographic rays in pipes -- Classification of RFID tags with wavelet fingerprinting -- Pattern classification for interpreting sensor data from a walking-speed robot -- Cranks and charlatans and deepfakes.
This book discusses various applications of machine learning using a new approach, the dynamic wavelet fingerprint technique, to identify features for machine learning and pattern classification in time-domain signals. Whether for medical imaging or structural health monitoring, it develops analysis techniques and measurement technologies for the quantitative characterization of materials, tissues and structures by non-invasive means. Intelligent Feature Selection for Machine Learning using the Dynamic Wavelet Fingerprint begins by providing background information on machine learning and the wavelet fingerprint technique. It then progresses through six technical chapters, applying the methods discussed to particular real-world problems. Theses chapters are presented in such a way that they can be read on their own, depending on the reader’s area of interest, or read together to provide a comprehensive overview of the topic. Given its scope, the book will be of interest to practitioners, engineers and researchers seeking to leverage the latest advances in machine learning in order to develop solutions to practical problems in structural health monitoring, medical imaging, autonomous vehicles, wireless technology, and historical conservation.
9783030493950
10.1007/978-3-030-49395-0 doi
Signal processing.
Biomedical engineering.
Materials—Analysis.
Control engineering.
Robotics.
Automation.
Computer science.
Signal, Speech and Image Processing .
Biomedical Engineering and Bioengineering.
Materials Characterization Technique.
Control, Robotics, Automation.
Computer Science.
TK5102.9
621.382