Analyzing changes in sediment meiofauna communities using the image analysis software ZooImage
Artikel i vetenskaplig tidskrift, 2013
Wehere propose a novelmethod of automatic classification of higher taxa frombenthicmeiofaunal communities
using the image analysis software ZooImage. Meiofauna was extracted from sediment at five sites at different
depths in the Gullmar Fjord on the Swedish west-coast, and digitalized through scanning. The resulting images
were analyzed with the image analysis software, by comparing them to a reference image library of meiofaunal
groups of higher taxa, as well as non-faunal groups consisting of different types of debris. The accuracy of the
analyses was tested using ZooImage internal cross-validation method, and by comparing digitalized samples
from the different sites with manually classified samples. The internal validation accuracy (82–93%)was comparable
to prior published studies on zooplankton. The largest errors in classification were within the non-faunal
groups and accuracy for classification of faunal groups was as high as 93%. Misclassification within the faunal
groups was mainly due to either too few images of some classes in the training set, or to when fauna could
not be sufficiently separated from debris in the images used for the library, causing interference in the learning
algorithm. Comparison with manual classification confirmed the errors revealed in the internal cross-validation.
Statistical analysis revealed differences in the meiofauna communities between different depths as well as a
temporal change
Sediment
ZooImage
Image analysis
Community response
Meiofauna