| metric_functions | R Documentation |
The sm_compute() computes a given metric (metric_id parameter) from
segmentation objects. It compares the reference to the segmentation
polygons using a metric.
A list with all supported metrics can be obtained
by sm_list_metrics() (see Details for more information).
The sm_metric_subset() returns the subset used to compute the metrics
in segmetric object.
sm_compute(m, metric_id, ...) sm_metric_subset(m, metric_id = NULL)
m |
A |
metric_id |
A |
... |
Any additional argument to compute a metric (see Details). |
"OS1" refers to Oversegmentation. Its values range from 0 (optimal) to 1
(Clinton et al., 2010).
"US1" refers to Undersegmentation. Its values range from 0 (optimal) to 1
(Clinton et al., 2010).
"OS2" refers to Oversegmentation. Its values range from 0 (optimal) to 1
(Persello and Bruzzone, 2010).
"US2" refers to Undersegmentation. Its values range from 0 (optimal) to 1
(Persello and Bruzzone, 2010).
"OS3" refers to Oversegmentation. Its values range from 0 (optimal) to 1
(Yang et al., 2014).
"US3" refers to Undersegmentation. Its values range from 0 (optimal) to 1
(Yang et al., 2014).
"AFI" refers to Area Fit Index. Its optimal value is 0 (Lucieer and Stein,
2002; Clinton et al., 2010).
"QR" refers to Quality Rate. Its values range from 0 (optimal) to 1
(Weidner, 2008; Clinton et al., 2010).
"D_index" refers to Index D. Its values range from 0 (optimal) to 1
(Levine and Nazif, 1982; Clinton et al., 2010).
"precision" refers to Precision. Its values range from 0 to 1 (optimal)
(Van Rijsbergen, 1979; Zhang et al., 2015).
"recall" refers to Recall. Its values range from 0 to 1 (optimal) (Van
Rijsbergen, 1979; Zhang et al., 2015).
"UMerging" refers to Undermerging. Its values range from 0 (optimal) to 1
(Levine and Nazif, 1982; Clinton et al., 2010).
"OMerging" refers to Overmerging. Its optimal value is 0
(Levine and Nazif, 1982; Clinton et al., 2010).
"M" refers to Match. Its values range from 0 to 1 (optimal) (Janssen and
Molenaar, 1995; Feitosa et al., 2010).
"E" refers to Evaluation Measure. Its values range from 0 (optimal) to 100
(Carleer et al., 2005).
"RAsub" refers to Relative Area. Its values range from 0 to 1 (optimal)
(Müller et al., 2007; Clinton et al., 2010).
"RAsuper" refers to Relative area. Its values range from 0 to 1 (optimal)
(Müller et al., 2007; Clinton et al., 2010).
"PI" refers to Purity Index. Its values range from 0 to 1 (optimal) (van
Coillie et al., 2008).
"Fitness" refers to Fitness Function. Its optimal value is 0 (Costa et al.,
2008).
"ED3" refers to Euclidean Distance. Its values range from 0 (optimal) to 1
(Yang et al., 2014).
"F_measure" refers to F-measure metric. Its values range from 0 to 1
(optimal) (Van Rijsbergen, 1979; Zhang et al., 2015). It takes the optional
weight argument alpha, ranging from 0.0 to 1.0 (the default is 0.5).
"IoU" refers to Intersection over Union metric. Its values range
from 0 to 1 (optimal) (Jaccard, 1912; Rezatofighi et al., 2019).
"SimSize" refers to the similarity size metric. Its values range from
0 to 1 (optimal) (Zhan et al., 2005).
"qLoc"refers to quality of object’s location metric. Its optimal value
is 0 (Zhan et al., 2005).
"RPsub" refers to Relative Position (sub) metric. Optimal value is 0
(Möller et al., 2007, Clinton et al., 2010).
"RPsuper" refers to Relative Position (super) metric. Its values range
from 0 (optimal) to 1 (Möller et al., 2007, Clinton et al., 2010).
"OI2 refers to Overlap Index metric. Its values range from 0 to 1
(optimal) (Yang et al., 2017).
Return a numeric vector with computed metric.
A complete list of cited references is available in ?segmetric.
sm_list_metrics()
# load sample datasets
data("sample_ref_sf", package = "segmetric")
data("sample_seg_sf", package = "segmetric")
# create segmetric object
m <- sm_read(ref_sf = sample_ref_sf, seg_sf = sample_seg_sf)
# compute AFI metric and summarize it
sm_compute(m, "AFI") %>% summary()
# compute three metrics and summarize them
sm_compute(m, c("AFI", "OS1", "US2")) %>% summary()
# compute OS1, F_measure, and US2 metrics using pipe
m <- sm_compute(m, "OS1") %>%
sm_compute("F_measure") %>%
sm_compute("US2")
# summarize them
summary(m)
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