Zeng Jiexian, Zhou Lili, Fu Xiang. Complex image line feature extraction based on improved Beamlet transform and the Canny operator[J]. Journal of Image and Graphics, 2012, 17(7): 775-782. DOI: 10.11834/jig.20120705.
Complex image line feature extraction based on improved Beamlet transform and the Canny operator
Traditional line feature detection methods based on structureless algorithms of the Beamlet transform not only suffer from overlapping and ambiguities
they also can not detect the target information effectively. Moreover
they can not describe the detail information when extracting the line features of a complex image. Therefore
we propose a new line feature extraction algorithm based on an improved Beamlet transform and the Canny operator. First
the Beamlet transform is performed. There is at most one optimal Beamlet in a dyadic square after improving the Beamlet structureless algorithm and using the new drawing rule and the new energy function. Second
the Canny operator for edge detection is used with a larger Sigma in order to detect only obvious edges. Finally
line feature are detected by a combination of both. The algorithm is evaluated under several aspects
such as the continuity of the line feature extraction
the false detection rate and the miss detection rate. Moreover
this method is compared to existing methods. The experimental results show that our proposed method not only overcomes their weakness such as fractureing
overlapping
sambiguities
false edges and so on
but also effectively improves the accuracy and continuity when extracting line feature of complex image.