5 edition of Pictorial data analysis found in the catalog.
Pictorial data analysis
NATO Advanced Study Institute on Pictorial Data Analysis (1982 Bonas, France)
|Statement||edited by Robert M. Haralick.|
|Series||NATO ASI series. Series F, Computer and system sciences ;, no. 4, NATO ASI series., no. 4.|
|Contributions||Haralick, Robert M., North Atlantic Treaty Organization. Scientific Affairs Division.|
|LC Classifications||TA1632 .N33 1982|
|The Physical Object|
|Pagination||viii, 468 p. :|
|Number of Pages||468|
|LC Control Number||83006855|
Data Analysis. This course is a combination of video instruction and tutorials, skill-building worksheets and templates, step-by-step guides, and an interactive forum for personalized responses and feedback to help you with your data analysis. These pages are concerned with data collection and preliminary analysis methods appropriate for academic research. They do not pretend to be exhaustive, but aim to give broad direction, some definitions, and a starting point for those with little experience of statistical methods.
Data analysis PFFS total scores were calculated by summing the scores for each domain; level one for each domain was scored 0, level two was scored 1, etc. A standardised frailty index (FI) was constructed by dividing the PFFS score by the maximum possible score (maximum score = 43 if no data were missing) with higher scores indicating. Pictorial definition, pertaining to, expressed in, or of the nature of a picture. See g: data analysis.
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Pictorial Data Analysis (Nato ASI Subseries F: (4)) Softcover reprint of the original 1st ed. Edition by Robert M. Haralick (Author) ISBN Cited by: On Pictorial Data Analysis, held Augustin the beautiful chateau de Bonas, Bonas France.
The director of the AS. was Robert M. Haralick and the Co-director was Stefano Levialdi. The papers in the book are arranged in two sections first theory and general prinicples and then applications. Local computations play a central role in image processing both when a traditional computer is used and.
On Pictorial Data Analysis, held Augustin the beautiful chateau de Bonas, Bonas France. The director of the AS. was Robert M. Haralick and the Co-director was Stefano Levialdi.
The papers in the book are arranged in two sections first theory and general prinicples and then applications. NATO Advanced Study Institute on Pictorial Data Analysis ( Bonas, France).
Pictorial data analysis. Berlin ; New York: Springer-Verlag, (OCoLC) Material Type: Conference publication, Internet resource: Document Type: Book, Internet Resource: All Authors / Contributors: Robert M Haralick; North Atlantic Treaty Organization.
Scientific Affairs Division. Data Base Techniques for Pictorial Pictorial data analysis book Florence, June 20–22, k Downloads; Part of the Lecture Notes in Computer Science book series (LNCS, volume 81) Papers Table of contents (31 papers) About About these proceedings Analysis of water remote sensed data: Requirements for data bases and data bases interactions.
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Computers are indispensable for the analysis of large amounts of data, for tasks that require complex computation, or for.