Book chapter · Conference paper
State estimation of the performance of gravity tables using multispectral image analysis
Gravity tables are important machinery that separate dense (healthy) grains from lighter (low yielding varieties) aiding in improving the overall quality of seed and grain processing. This paper aims at evaluating the operating states of such tables, which is a critical criterion required for the design and automation of the next generation of gravity separators.
We present a method capable of detecting differences in grain densities, that as an elementary step forms the basis for a related optimization of gravity tables. The method is based on a multispectral imaging technology, capable of capturing differences in the surface chemistry of the kernels. The relevant micro-properties of the grains are estimated using a Canonical Discriminant Analysis (CDA) that segments the captured grains into individual kernels and we show that for wheat, our method correlates well with control measurements (R2 =0.93).
Language: | English |
---|---|
Publisher: | Springer |
Year: | 2017 |
Pages: | 471-480 |
Proceedings: | 20th Scandinavian Conference on Image Analysis |
Series: | Lecture Notes in Computer Science |
Journal subtitle: | 20th Scandinavian Conference, Scia 2017, Tromsø, Norway, June 12–14, 2017, Proceedings, Part II |
ISBN: | 3319591282 , 3319591290 , 9783319591285 and 9783319591292 |
ISSN: | 16113349 and 03029743 |
Types: | Book chapter and Conference paper |
DOI: | 10.1007/978-3-319-59129-2_40 |
ORCIDs: | Carstensen, Jens Michael |
CDA Canonical discriminant analysis Computer Science (all) Control measurements Discriminant analysis Grain (agricultural product) Grain processing Gravity separator Gravity tables Image analysis Imaging techniques Machinery Micro properties Multi-spectral image analysis Multispectral imaging Multispectral imaging and state optimization State estimation State optimization Surface chemistry Theoretical Computer Science