scene-layout compatible conditional random field for classifying terrestrial laser point clouds
Clicks: 172
ID: 139839
2014
Terrestrial Laser Scanning (TLS) rapidly becomes a primary surveying tool due to its fast acquisition of highly dense threedimensional
point clouds. For fully utilizing its benefits, developing a robust method to classify many objects of interests from huge
amounts of laser point clouds is urgently required. Conditional Random Field (CRF) is a well-known discriminative classifier, which
integrates local appearance of the observation (laser point) with spatial interactions among its neighbouring points in classification
process. Typical CRFs employ generic label consistency using short-range dependency only, which often causes locality problem. In
this paper, we present a multi-range and asymmetric Conditional Random Field (CRF) (maCRF), which adopts a priori information
of scene-layout compatibility addressing long-range dependency. The proposed CRF constructs two graphical models, one for
enhancing a local labelling smoothness within short-range (srCRF) and the other for favouring a global and asymmetric regularity of
spatial arrangement between different object classes within long-range (lrCRF). This maCRF classifier assumes two graphical
models (srCRF and lrCRF) are independent of each other. Final labelling decision was accomplished by probabilistically combining
prediction results obtained from two CRF models. We validated maCRF's performance with TLS point clouds acquired from RIEGL
LMS-Z390i scanner using cross validation. Experiment results demonstrate that synergetic classification improvement can be
achievable by incorporating two CRF models.
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luo2014isprsscene-layout
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Authors | ;C. Luo;G. Sohn |
Journal | kolner zeitschrift fur soziologie und sozialpsychologie |
Year | 2014 |
DOI | 10.5194/isprsannals-II-3-79-2014 |
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