segment
OpenML dataset with id 40984
Author name not available (Why is that?)
Full work available at URL: https://api.openml.org/data/v1/download/18151937/segment.arff
Upload date: 4 December 2017
Dataset Characteristics
Number of classes: 7
Number of features: 20 (numeric: 19, symbolic: 1 and in total binary: 0 )
Number of instances: 2,310
Number of instances with missing values: 0
Number of missing values: 0
Author: University of Massachusetts Vision Group, Carla Brodley Source: UCI - 1990 Please cite: UCI
Image Segmentation Data Set The instances were drawn randomly from a database of 7 outdoor images. The images were hand-segmented to create a classification for every pixel. Each instance is a 3x3 region.
__Major changes w.r.t. version 2: ignored first two variables as they do not fit the classification task (they reflect the location of the sample in the original image). The 3rd is constant, so should also be ignored.__
Attribute Information
4. short-line-density-5: the results of a line extractoin algorithm that
counts how many lines of length 5 (any orientation) with
low contrast, less than or equal to 5, go through the region.
5. short-line-density-2: same as short-line-density-5 but counts lines
of high contrast, greater than 5.
6. vedge-mean: measure the contrast of horizontally
adjacent pixels in the region. There are 6, the mean and
standard deviation are given. This attribute is used as
a vertical edge detector.
7. vegde-sd: (see 6) 8. hedge-mean: measures the contrast of vertically adjacent
pixels. Used for horizontal line detection.
9. hedge-sd: (see 8). 10. intensity-mean: the average over the region of (R + G + B)/3 11. rawred-mean: the average over the region of the R value. 12. rawblue-mean: the average over the region of the B value. 13. rawgreen-mean: the average over the region of the G value. 14. exred-mean: measure the excess red: (2R - (G + B)) 15. exblue-mean: measure the excess blue: (2B - (G + R)) 16. exgreen-mean: measure the excess green: (2G - (R + B)) 17. value-mean: 3-d nonlinear transformation
of RGB. (Algorithm can be found in Foley and VanDam, Fundamentals
of Interactive Computer Graphics)
18. saturatoin-mean: (see 17)
19. hue-mean: (see 17)
This page was built for dataset: segment