Full text: Close-range imaging, long-range vision

  
  
  
  
Our experiments show that combining wavelet transform and 
histogram-based intersection for image comparison can 
effectively remove motion blurring images, but the number of 
images picked out by this method is much greater than actual 
number. For instance, if 30 images out of 1,000 images are useful, 
then more than 100 image or even several hundreds images can 
be chosen out by using this method. Though all the useful images 
are included, this method is actually of no use (Yan Zhou, 
personnel corresponding). 
Using our algorithm described in section 3, we solved the 
problem successfully. If a pick-out-ratio is defined between the 
number of useful images out of all the picked out images and the 
number of all the picked out images itself, then the assessment of 
the effectiveness of the proposed algorithm includes the 
following two aspects: 
(1) whether all the useful images are included in the picked out 
images? 
(2) How about the pick-out-ratio? 
Our results using train images under different illumination 
conditions show that all the useful images can be chosen out, 
With a pick-out-ratio steadily around 9096. For images of a train, 
all the procedure can be finished within 6 minutes, which is 
completely satisfied by practice. 
S. CONCLUSIONS 
Starting from the primary mathematical definition of 
semivariogram, this paper fully uses the properties of 
semivariogram which describes both the randomness and 
structure of a data set to define a new parameter for image 
comparison. Compared with other image distance functions for 
image comparison, the algorithm proposed in this paper has three 
merits: high sensitivity to image structure, low computational 
complexity and no special requirements of imaging condition. 
The case study show the effectiveness of the algorithm, 
providing a new method for content-based image retrieval. 
Though more than 10 years have been past since the first 
application of semivariogram to remotely sensed image analysis, 
there is no report on its application to close-range photographic 
image processing. This paper gives out the pioneering work in 
this field. 
However, more case studies are still needed to test the 
effectiveness of the algorithm, and some computational 
strategies also should be considered to make the algorithm more 
fast. All these have been listed to the agenda of the authors 
further studies. 
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