The World Congress on Engineering 2015, WCE 2015

A.I. Ao, Len Gelman, David WL Hukins, Andrew Hunter, A.M. Korsunsky

Research output: Chapter in Book/Conference proceedingConference contribution

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Abstract

The computation of optical flow by the differential method imposes additional constraints to the one already imposed in the derivation of the optical flow equation. Consequently, the computation of optical flow using differential methods is computationally expensive especially for devices such as mobile phones, which have low processing power. In this work, we propose an optical flow computation method based on local features called the nearest flow. Our nearest flow method works by estimating the distance ratio of two nearest features to find the best match for a feature point. To improve the quality of the sparsely generated flow vectors, we apply the random sampling consensus method to remove false flows that may arise as a result of noise and other imagery conditions. We compare the performance of our nearest flow method with that of Gunner Farneback’s and the local differential method of Lucas and Kanade by evaluating the average angular error for each method in the computation of optical flow. The results obtained show that our nearest flow method is faster and more accurate than Gunner Farneback’s method and it is almost at the same level of performance as the Lucas and Kanade method.
Original languageEnglish
Title of host publicationLecture Notes in Engineering and Computer Science
Place of PublicationHong Kong
PublisherNewswood Ltd
Number of pages1330
Volume1
Publication statusPublished - Jul 2015
EventThe 2015 International Conference of Signal and Image Engineering - Imperial College, London
Duration: 1 Jul 20153 Jul 2015

Publication series

NameLecture Notes in Engineering and Computer Science
PublisherNewswood Limited ,Internatinal Association of Engineers

Conference

ConferenceThe 2015 International Conference of Signal and Image Engineering
CityImperial College, London
Period1/07/153/07/15

Keywords

  • Angular error
  • Harris corner detector
  • k-nearest neighbour
  • Optical flow

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