Procedings of the British Machine Vision Conference 2005 2005
DOI: 10.5244/c.19.27
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A Virtual Keyboard Based on True-3D Optical Ranging

Abstract: In this paper, a complete system is presented which mimics a QWERTY keyboard on an arbitrary surface. The system consists of a pattern projector and a true-3D range camera for detecting the typing events. We exploit depth information acquired with the 3D range camera and detect the hand region using a pre-computed reference frame. The fingertips are found by analyzing the hands' contour and fitting the depth curve with different feature models. To detect a keystroke, we analyze the feature of the depth curve a… Show more

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Cited by 33 publications
(12 citation statements)
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“…where d 0 is the rangefinder offset, which may be coupled to a particular integration time; d 1 is the scale error; d 2 -d 7 are the cyclic or periodic error terms; U is the unit length, which is equal to one-half of the modulating wavelength; and e 1 and e 2 are the signal propagation delay errors (Fuchs and May, 2007), also known as the clock-skew errors (Du et al, 2005). In contrast to Lindner and Kolb (2006), who use B-splines to model the cyclic errors, or Fuchs and May (2007), Schiller et al (2008) and Kim et al (2008) who use algebraic polynomials, the cyclic-error models chosen here are driven by the known physical causes of these periodic effects (e.g.…”
Section: Systematic Error Modelsmentioning
confidence: 99%
See 1 more Smart Citation
“…where d 0 is the rangefinder offset, which may be coupled to a particular integration time; d 1 is the scale error; d 2 -d 7 are the cyclic or periodic error terms; U is the unit length, which is equal to one-half of the modulating wavelength; and e 1 and e 2 are the signal propagation delay errors (Fuchs and May, 2007), also known as the clock-skew errors (Du et al, 2005). In contrast to Lindner and Kolb (2006), who use B-splines to model the cyclic errors, or Fuchs and May (2007), Schiller et al (2008) and Kim et al (2008) who use algebraic polynomials, the cyclic-error models chosen here are driven by the known physical causes of these periodic effects (e.g.…”
Section: Systematic Error Modelsmentioning
confidence: 99%
“…May et al (2006) also proposed pixel-wise calibration. For their virtual keyboard finger tracking application, Du et al (2005) employed independent camera and range measurement calibrations. One such procedure used range images of a plane to estimate the clock-skew error correction terms.…”
Section: Introductionmentioning
confidence: 99%
“…There are many other applications in various fields [16] that have gained substantial research interest following the advent of the range sensor, such as robotic and machine vision in the field of mobile robotics search and rescue [17,18], path-planning for manipulators [19], the acquisition of 3D scene geometry [20], 3D sensing for automated vehicle guidance and safety systems, wheelchair assistance [21], outdoor surveillance [22], simultaneous localization and mapping (SLAM) [23], map building [24], medical respiratory motion detection [25], robot navigation [26], semantic scene analysis [27], mixed/augmented reality [28], gesture recognition [29], markerless human motion tracking [30], human body tracking and activity recognition [31], 3D reconstruction [32], domestic cleaning tasks [33] and human-machine interaction [34,35].…”
Section: Tof-based 3d Cameras -State-of-the-artmentioning
confidence: 99%
“…On the other hand, the interdigital clefts are shown as the valleys of the contour and can be detected by finding the local minima of the k-curvature. K-curvature computation can be simplified by using the approximation of sign change [18], as shown in Fig 5. After the fingertips are detected in 2D image plane, they are mapped back into the 3D space using the depth map. …”
Section: A Fingertipmentioning
confidence: 99%