Seung-Jun HwangSeung-Je ParkJoong-Hwan Baek
In this paper, we propose an algorithm for on-line signature recognition using fingertip point in the air from the depth image acquired by Kinect. We extract 10 statistical features from X, Y, Z axis, which are invariant to changes in shifting and scaling of the signature trajectories in three-dimensional space. Artificial neural network is adopted to solve the complex signature classification problem. 30 dimensional features are converted into 10 principal components using principal component analysis, which is 99.02% of total variances. We implement the proposed algorithm and test to actual on-line signatures. In experiment, we verify the proposed method is successful to classify 15 different on-line signatures. Experimental result shows 98.47% of recognition rate when using only 10 feature vectors.
Shatha A. BakerHesham MohammedHanan Anas Aldabagh
Vahab IranmaneshSharifah Mumtazah Syed AhmadWan Azizun Wan AdnanSalman YussofOlasimbo Ayodeji ArigbabuFahad Layth Malallah
Vahab IranmaneshSharifah Mumtazah Syed AhmadWan Azizun Wan AdnanSalman YussofOlasimbo Ayodeji ArigbabuFahad Layth Malallah
Vahab IranmaneshSharifah Mumtazah Syed AhmadWan Azizun Wan AdnanSalman YussofOlasimbo Ayodeji ArigbabuFahad Layth Malallah