Ref. e = A à DS | Scheel um ale es BS
Road 10.59 | 0.06 | 0.47 | 0.19 | 0.39 | 0.08 | 0.75 | 2.49 | - [001] — [0121021| — [68.73
Isl. V 010 loo | - Shr ai. | 00L ied we] ei wn] we |.— Le- [45
Sidew. 1.28 - [0335| 0.13 | 0.32 | 0.05 | 021|069| —- | - | - [009|004|] — [1100
Build. 0.38 — | 0.04 | 13.02 | 0.48 | 0.06 | 0.18 | 130| — | — | — | 0.16 | 0.18 | 023 [81.17
Grass 0.30 — | 0.14 | 0.57 |i448| 1.03 | 0.16 | 0.94 | 0.05 | 0.40 | 0.06 | 4.61 | 0.07 | — [63.51
Agr. 0.04 — | 0.17 | 0.25 | 0.74 | 7,03 0.85 | 0.25 | 0.04 | 0.01 | 3.18 | 0.05 | — |s5.70
Water 0.08 = - oo] 09] - F5] oo) - | - | - | - 1002] —. [4947
Sealed 3.67 0.52 | 0.81 | 1.08 | 0.28 | 0.40 | 3.19] — | - | 001 | 033 | 0.23 | 0.01 [3022
Isl. A 0.01 = - mm VOL] wnt | wo ct BA PL] = EE
Beach 0.01 - E TT -|-Tz
Railw. 0.05 - Joe ['- ped lees] Lo] - | — 133: /004/ - | — | 264
Tree 0.21 — | oo: | 012 | 2,57 | 0.14 | 001 | 010] — | - | - H9] oo | — [8180
Car 0.05 =. | 002 | 002 | 003 [001 | - loi] - ] - | - [oo E933] — [49,6
Bridge 0.08 > - dee] >|5—-| — 1006| - | — | - | — [ou at +
Corr. 62.84 | 6.74 | 19.10 | 85.45 | 71.54 | 80.51 | 11.07 /31.98| — | — |10.60|62.59|28.14| —
Table 1: Confusion matrix for the experiment using 14 classes and the car confidence feature. All values are given in [%]. Overall
accuracy: 63.50%. Abbreviations: Ref.: Reference; Isl. V: traffic island with vegetation; Sidew.: sidewalk; Build.: building;
Agr.: agricultural; Isl. A: traffic island with asphalt; Railw.: railway; Comp. / Corr.: Completeness / Correctness.
Class =: » i 5 3 s 5 3 a = z ; v à
Ref. Z£izlelsls|sis|izis|s|sz|c '$l81l35
Road 10.25 | 0.08 | 0.50 | 0.18 | 0.35 | 0.12 | 0.78 | 2.56 - 0.01 - 0.12 0.43 | 0.02 | 66.56
Isl. V 0.10 | 0.01 -- - - = 710.01 | - = E = = = — 857
Sidew. 1.22 - 0.39 10.13 | 0.30 | 0.08 | 0.21 | 0.65 - - - 0.10 0.10 == 112.22
Build. 0.23 - 0.02 [13.18] 0.43 | 0.09 | 0.17 | 1.20 - - - 0.17 0.35 | 0.20 | 82.18
Grass 0.14 -- 0.12 | 0.56 |14.06| 1.41 | 0.15 | 0.90 | 0.04 0.40 0.04 4.84 0.13 - 161.68
Agr. 0.03 -- 0.15 | 0.25 | 0.68 | 7.21 0.84 | 0.16 - 0.01 3.19 0.09 - | 57.11
Water 0.07 -- - 0.04 | 0.02 - 0.21 | 0.05 - = - - 0.03 == | 49.39
Sealed 3.47 0.01 | 0.55 | 0.80 | 0.97 | 0.43 | 0.40 | 3.10 - - 0.01 0.34 0.46 | 0.01 | 29.36
Isl. A 0.01 - -- = 0.01 - - - 0.00 - - - - -- -
Beach = - - - - - - 1010 | - 0.00 | 0.01 - - - -
Railw. 0.04 - 0.09 - 0.09 | 0.07 - 0.04 - - 0.01 0.04 - - 2.80
Tree 0.01 - 0.02 | 0.12 | 2.38 | 0.26 | 0.01 | 0.09 - - - 14.57 | 0.02 - 183.43
Car 0.03 -- 0.02 | 0.02 | 0.03 | 0.02 - 0.19 - - - 0.01 0.33 - 150.02
Bridge 0.08 -- - 0.09 - - - 0.03 - — - - 0.03 | 0.00 -
Corr. 65.37 | 6.92 | 20.85 | 85.78 | 72.75 | 74.45 | 11.02 | 31.80 | — - 13.33 | 62.29 |16.75| --
Table 2: Confusion matrix for the experiment using 14 classes without the car confidence feature. All values are given in [%].
Overall accuracy: 63.32%. Abbreviations: see caption of Table 1.
5. CONCLUSION future we want to improve our method by integrating more
expressive features, e.g. HOG features or features related to car
In this paper, a method for the classification of crossroads using
MRF was proposed. It considered 3D information in the form of
a DSM generated from multiple overlapping aerial images, as
well as a car confidence feature to avoid problems with
occlusions of the road surface by cars. Distinguishing 14 classes
relevant in the context of crossroads, an overall accuracy of
about 63.5% could be achieved. The main error sources were
the confusion of object classes that are only distinguished by
their relative alignment, but not by their appearance in the data
(road, sidewalk, sealed) and errors in the DSM generation
process. After merging the classes that are most similar in
appearance, the overall accuracy was increased to 74.8%. In the
trajectories, and we will also integrate multi-scale features.
Furthermore, we want to build a more sophisticated model of
context based on Conditional Random Fields (Kumar & Hebert,
2006), also using improved models for the association
potentials linking the class labels to the data. Finally, we will
investigate whether the results can be improved by using image
segments as the nodes of the graphical model.
ACKNOWLEDGEMENT
This research was funded by the German Science Foundation
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