The International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences. Vol. XXXVII. Part Bl. Beijing 2008
The Interna
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in the high-dimensional space and the image manifold is sampled
at regular intervals of pose angle to make the training images. In
the first experiment, images separated by 50° in pose angle were
chosen to construct the representative non Gaussians space of the
images. That is to say, there are 7 training images for each object, — jj
making a total of 140 training images. The training views of the
first object are shown in Fig 4 Table I Ni
3.1. Results with Pose Angle Sampling at Every 50°
The image presented to the IPCA network as described in the
methodology. The recognition is achieved by finding th e
minimum distance between the coefficients of a test image and
the training images. The vector of the image in the training set
that is nearest to the test image non Gaussian vector is chosen as
the recognized image.
3.2. Result
The previous ex
every 25°. This j
images as the tes
Training images are sampled by 50° in pose angle. That is to say,
there are 6 training images for each object, making a total of 140
training images. The images that were not in the training set were
considered as test images, thus making a total of 1300 test images.
In the following two experiments, number of non Gaussian
vectors q is turned parameters q= {20, 25,30,35,40, 45, 50} and
the Table II shows the results and the Fig 5 represents the test
applied to that object
J<
_P
II
Table IIN
From the a
better resi
increasing
that the pe
the Increm
vectors i
vectors are
(a)
Fig 5: Object Extracting Using IPCA-ICA (50°)
(a) Input image (b) Object is mixed with some unknown mixtures
(c) Object Extracting Using IPCA-ICA (d) Duck with Orient 150°