Learning Features for Robust Object Recognition
Produktform: Buch / Einband - flex.(Paperback)
In daily life humans easily distinguish large numbers of objects based on their
visual appearance. Despite extensive efforts in recent years, modem
recognition systems are unable to robustly reproduce this capability. The main
problem is that any object can have an infinite number of appearances, due to
different viewing positions, lighting conditions and occlusion. A technical
system must leam to generalize over these irrelevant variances, while
concentrating on the meaningful object information. This is done by the socalled
feature extraction.
In this work I investigate two new methods for feature leaming that should
overcome the limitations of existing approaches. The first method is based on
the holistic appearance of objects and tries to combine the advantages of
supervised and unsupervised learning. I show for a constraint scenario that the
obtained features improve the recognition performance. However the rigidness
of the holistic coding prevents the application of the method to more complex,
real world scenarios. Because of this in the second approach I use a more
flexible representation that focuses on the presence of local object parts. After
proposing a new supervised feature selection method, I show that the resulting
representation yields a strong performance on various object databases and
avoids some drawbacks of established recognition approaches. Finally I
integrate the approach into areal-time recognition system that is the first one to
robustly identify about 120 objects of arbitrary shape and texture under 3D
rotation in front of cluttered background, and thus marks a major step towards
invariant object recognition.weiterlesen
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