Face motion unit detection method based on physical characteristics and distribution characteristics
A technology of face movement and distribution characteristics, applied in the computer field, can solve the problems of poor detection effect, poor AU detection and detection effect, and shallow network layers, and achieve the effect of accelerating the convergence speed.
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Embodiment 1
[0052] This embodiment provides a human face motion unit detection method based on physical characteristics and distribution characteristics. The method is based on a pre-trained human face motion unit (AU) detection model to perform multi-label learning and classification on a group of picture sequences to obtain human face motion. Unit detection results, the human face motion unit detection model includes a sequentially connected cross-splicing network and a long-short-term memory network.
[0053] This embodiment is based on the deep learning framework of caffe, and implements the face motion unit detection model on the Ubuntu system. The face motion unit detection model does not need to add a special layer, and only needs to modify the existing layer structure of caffe to complete , the implementation difficulty is very low, and the test performance on the public AU detection algorithm datasets BP4D, DISFA, and GFT is very good, surpassing other algorithms that currently pe...
Embodiment 2
[0080] In order to test the performance of the present invention in this embodiment, the detection method of the present invention is used for testing on three public AU detection data sets. In the experiment, the detection method of the present invention is referred to as CCT (cross-concat and temporal network) for better The function of the cross-concat block is clearly shown, and the network that removes the LSTM in the CCT is referred to as CC.
[0081] There are two general measurement standards for the effect of AU detection algorithms, F1score and AUC. Among them, F1score is the harmonic mean of precision and recall, and AUC is the area under the ROC curve. The higher the F1 score and AUC, the better the detection effect of the algorithm.
[0082] Table 2, Table 3 and Table 4 show the comparative experimental results on these three data sets respectively.
[0083] Table 2 Algorithm comparison results on the BP4D dataset (the bold table with square brackets is the best...
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