Title of article :
Optical Flow Estimation Using Temporally Oversampled Video
Author/Authors :
Jae S. Lim، نويسنده , , J. G. Apostolopoulos، نويسنده , , Mahmoud A. El-Gamal، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2005
Abstract :
Recent advances in imaging sensor technology make
high frame-rate video capture practical. As demonstrated in previous
work, this capability can be used to enhance the performance
of many image and video processing applications. The idea is to
use the high frame-rate capability to temporally oversample the
scene and, thus, to obtain more accurate information about scene
motion and illumination. This information is then used to improve
the performance of image and standard frame-rate video applications.
This paper investigates the use of temporal oversampling to
improve the accuracy of optical flow estimation (OFE). A method
for obtaining high accuracy optical flowestimates at a conventional
standard frame rate, e.g., 30 frames/s, by first capturing and processing
a high frame-rate version of the video is presented. The
method uses the Lucas–Kanade algorithm to obtain optical flow
estimates at a high frame rate, which are then accumulated and
refined to estimate the optical flow at the desired standard frame
rate. The method demonstrates significant improvements in OFE
accuracy both on synthetically generated video sequences and on
a real video sequence captured using an experimental high-speed
imaging system. It is then shown that a key benefit of using temporal
oversampling to estimate optical flow is the reduction in motion
aliasing. Using sinusoidal input sequences, the reduction in
motion aliasing is identified and the desired minimum sampling
rate as a function of the velocity and spatial bandwidth of the scene
is determined. Using both synthetic and real video sequences, it is
shown that temporal oversampling improves OFE accuracy by reducing
motion aliasing not only for areas with large displacements
but also for areas with small displacements and high spatial frequencies.
The use of other OFE algorithms with temporally oversampled
video is then discussed. In particular, the Haussecker algorithm
is extended to work with high frame-rate sequences. This
extension demonstrates yet another important benefit of temporal
oversampling, which is improving OFE accuracy when brightness
varies with time.
Keywords :
High-speed imaging , CMOS image sensor , motionestimation , optical flow estimation (OFE) , temporal oversampling.
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING