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논문 리스트

2017
Human Face Tracking and Modeling using Active Appearance Model with Motion Estimation Human Face Tracking and Modeling using Active Appearance Model with Motion Estimation
(사)한국스마트미디어학회
김수형 외 2명
논문정보
Publisher
스마트미디어저널
Issue Date
2017-09-30
Keywords
-
Citation
-
Source
-
Journal Title
-
Volume
6
Number
3
Start Page
49
End Page
56
DOI
ISSN
22871322
Abstract
Images and Videos that include the human face contain a lot of information. Therefore, accurately extracting human face is a very important issue in the field of computer vision. However, in real life, human faces have various shapes and textures. To adapt to these variations, A model-based approach is one of the best ways in which unknown data can be represented by the model in which it is built. However, the model-based approach has its weaknesses when the motion between two frames is big, it can be either a sudden change of pose or moving with fast speed. In this paper, we propose an enhanced human face-tracking model. This approach included human face detection and motion estimation using Cascaded Convolutional Neural Networks, and continuous human face tracking and modeling correction steps using the Active Appearance Model. A proposed system detects human face in the first input frame and initializes the models. On later frames, Cascaded CNN face detection is used to estimate the target motion such as location or pose before applying the old model and fit new target.

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이름 소속
김수형 인공지능학부