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国家自然科学基金(60675025)

作品数:2 被引量:2H指数:1
发文基金:国家自然科学基金国家教育部博士点基金更多>>
相关领域:自动化与计算机技术更多>>

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Contact-free and pose-invariant hand-biometric-based personal identification system using RGB and depth data
2014年
Hand-biometric-based personal identification is considered to be an effective method for automatic recognition. However, existing systems require strict constraints during data acquisition, such as costly devices,specified postures, simple background, and stable illumination. In this paper, a contactless personal identification system is proposed based on matching hand geometry features and color features. An inexpensive Kinect sensor is used to acquire depth and color images of the hand. During image acquisition, no pegs or surfaces are used to constrain hand position or posture. We segment the hand from the background through depth images through a process which is insensitive to illumination and background. Then finger orientations and landmark points, like finger tips or finger valleys, are obtained by geodesic hand contour analysis. Geometric features are extracted from depth images and palmprint features from intensity images. In previous systems, hand features like finger length and width are normalized, which results in the loss of the original geometric features. In our system, we transform 2D image points into real world coordinates, so that the geometric features remain invariant to distance and perspective effects. Extensive experiments demonstrate that the proposed hand-biometric-based personal identification system is effective and robust in various practical situations.
Can WANGHong LIUXing LIU
Inertial measurement unit-camera calibration based on incomplete inertial sensor information被引量:2
2014年
This paper is concerned with the problem of estimating the relative orientation between an inertial measurement unit(IMU) and a camera. Unlike most existing IMU-camera calibrations, the main challenge in this paper is that the information output from the IMU is incomplete. For example, only two tilt information can be read from the gravity sensor of a smart phone. Despite incomplete inertial information, there are strong restrictions between the IMU and camera coordinate systems. This paper addresses the incomplete information based IMUcamera calibration problem by exploiting the intrinsic restrictions among the coordinate transformations. First,the IMU transformation between two poses is formulated with the unknown IMU information. Then the defective IMU information is restored using the complementary visual information. Finally, the Levenberg-Marquardt(LM)algorithm is applied to estimate the optimal calibration result in noisy environments. Experiments on both synthetic and real data show the validity and robustness of our algorithm.
Hong LIUYu-long ZHOUZhao-peng GU
关键词:CALIBRATION
Methods of Recognizing True and Fake Smiles by Using AU6 and AU12 in a Holistic Way
Smile is one of the simplest forms of expressions that it is easy to recognize for human beings.It will be one...
Pingping WuWenmin WangHong Liu
关键词:2DPCA
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