Full text: Papers accepted on the basis of peer-reviewed full manuscripts (Part A)

In: Paparoditis N., Pierrot-Deseilligny M., Mallet C.. Tournaire O. (Eds). IAPRS. Vol. XXXVIII. Part ЗА - Saint-Mandé, France. September 1-3, 2010 
Table 1: Object-based evaluation results in percentages (C m = 
completeness, C r = correctness, Qi = quality, M d = multiple de 
tection rate, D 0 = Detection overlap rate, C r d = detection cross 
lap rate and C rr = reference cross-lap rate). 
Scenes 
C m 
a 
Qi 
M d 
D 0 
C r d 
Crr 
Scene 1 
98.6 
97.2 
95.9 
4.1 
5.4 
1.4 
5.7 
Scene 2 
95.2 
95.2 
90.8 
3.1 
3.1 
1.6 
6.5 
Scene 3 
98.3 
92.2 
90.8 
4.5 
9.0 
13.4 
23.3 
Scene 4 
95.1 
95.1 
90.7 
6.1 
18.3 
17.5 
28.7 
Average 
95.9 
94.7 
91.4 
5.1 
12.5 
12.5 
21.7 
Table 2: Pixel-based evaluation results in percentages (C mp = 
completeness, C rp = correctness, Qi v = quality. A oe = area omis 
sion error. A cc = area commission error, Bf = branching factor 
and Mf = miss factor). 
Scenes 
Cmp 
C rp 
Qip 
A oe 
A ce 
Bf 
M f 
Scene 1 
78.5 
89.0 
71.5 
21.6 
10.7 
12.3 
27.5 
Scene 2 
77.7 
87.4 
69.8 
22.3 
12.3 
14.5 
28.8 
Scene 3 
80.5 
91.4 
74.8 
19.5 
8.3 
9.5 
24.3 
Scene 4 
81.4 
85.1 
71.3 
18.6 
14.1 
17.5 
22.9 
Average 
80.4 
87.5 
72.0 
19.7 
12.0 
14.5 
24.6 
6 CONCLUSIONS AND FUTURE WORK 
This paper has proposed an automatic building detection tech 
nique using LIDAR data and multispectral imagery. The initial 
building positions are obtained from the primary building mask 
derived from LIDAR data. The final building positions are ob 
tained by extending their initial positions based on colour infor 
mation, and the two masks ensure the accurate delineation of the 
buildings. In particular, the primary building mask helps separate 
building detections when they are very close to each other and the 
secondary building mask helps to confine the extension of initial 
positions outside a building when the roof and ground have sim 
ilar colour information. Experimental testing has shown that the 
proposed technique can detect rectilinear buildings of different 
shapes with a very high success rate. 
An important observation from the presented results is that object- 
based completeness (detection rate 95.9%) is high when com 
pared to pixel-based completeness (matching overlay 81.4%). How 
ever. the geometric positional accuracy remains relatively poor 
(14.5 pixels) for mapping purposes; although not for applications 
where building detection is the primary goal. This observation 
suggests that the proposed detection technique can be applied 
in city planning, homeland security, disaster (flood or bushfire) 
management and building change detection with high reliability, 
but it is not as yet applicable to cadastral mapping and accurate 
roof plane extraction, both of which require higher pixel-based 
and geometric accuracy. 
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