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Discovery of Ill–Known Motifs in Time Series Data (1st ed. 2022)

Part of the Technologien fur die intelligente Automation series
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This book includes a novel motif discovery for time series, KITE (ill-Known motIf discovery in Time sEries data), to identify ill-known motifs transformed by affine mappings such as translation, uniform scaling, reflection, stretch, and squeeze mappings.

Additionally, such motifs may be covered with noise or have variable lengths.

Besides KITE’s contribution to motif discovery, new avenues for the signal and image processing domains are explored and created.  The core of KITE is an invariant representation method called Analytic Complex Quad Tree Wavelet Packet transform (ACQTWP).

This wavelet transform applies to motif discovery as well as to several signal and image processing tasks.

The efficiency of KITE is demonstrated with data sets from various domains and compared with state-of-the-art algorithms, where KITE yields the best outcomes.

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RRP £74.99
Product Details
Springer Vieweg
366264214X / 9783662642146
Paperback / softback
519.55
02/10/2021
Germany
205 pages, 30 Illustrations, color; 18 Illustrations, black and white; XIV, 205 p. 48 illus., 30 ill
168 x 240 mm