Auto-calibration: new method and comparisons

In this paper, we propose a method to find out the intrinsic parameters of the camera using the matrix rank constrain (MRC) of the relation matrix for absolute conic W. At the end of this paper, experimental results are presented and are compared with the other methods, which show the good performance of this proposed method.

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