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

  
er row) and without 
ects the step lengths 
1orm would increase, 
in), and converges in 
ion (upper right col- 
investigated by ap- 
essively more distant 
their success or fail- 
111 = bii = 97.95, 
; = 934.33. r; — 0.1. 
tch position a 11,511 
starting approxima- 
rs were aio = b91 = 
values for the radio- 
d from the picture at 
convergence for the 
) and 7, respectively. 
oward the correct so- 
le the damped algo- 
tions. The undamped 
inima at 5 occasions. 
imped algorithm was 
Iness of a line-search 
st Squares Matching 
1e damped algorithm 
extra residual calcu- 
t which is more than 
ons the undamped al- 
or the same problem, 
orithm is higher than 
er, the repetitive pat- 
ased the convergence 
is likely to be less of 
es. 
  
Figure 6: Pull-in range results for the damped (left) and 
undamped (right) algorithms. The bright pixels indicate 
for which displacements of the patch center the algorithms 
converged toward the correct solution. 
Finally, this paper illustrates but one example of the large 
potential of combining the theories and experiences of the 
two research fields photogrammetry and non-linear least 
squares optimization. This potential will be further ex- 
plored in the future. 
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Figure 7: Convergence toward side minima for the damped 
(left) and undamped (right) algorithm. Bright pixels indi- 
cate for which displacements of the patch center the al- 
gorithms converged toward a side minima with the same 
residual as the correct solution. 
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