Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
6941881 | Signal Processing: Image Communication | 2015 | 15 Pages |
Abstract
In this paper the effects of transmission artifacts on the performance of a number of state-of-the-art pedestrian detection algorithms are evaluated. We demonstrate that the human visual system may not perceive distortions that adversely affect machine vision performance. As a result, existing full-reference image quality metrics are not necessarily accurate predictors of machine vision performance on transmitted video sequences. To address this problem, a novel, computationally inexpensive, full-reference objective quality metric based on histogram of oriented gradients is proposed. The proposed metric accurately predicts algorithm performance in the presence of transmission artifacts. The metric can be used at the system design stage in order to optimize image capture parameters for machine vision performance without the need for annotated test databases, which are both expensive and time consuming to produce.
Keywords
AWGNJPEG2000JPEGSSIMPSNRIQAIFCDcTLAMrICFMOSdpmVIFRMSEJP2SIFTMSEHVSADAsImage quality assessmentHogmean squared errorroot mean squared errorHuman visual systemAdvanced Driver Assistance SystemsStructural similaritySVMSupport vector machineScale invariant feature transformMean opinion scoreCompression ratioPeak signal to noise ratioAdditive white Gaussian noisePhase congruencyhistogram of oriented gradientsGSMImage qualityObjective qualityJoint Photographic Experts Group
Related Topics
Physical Sciences and Engineering
Computer Science
Computer Vision and Pattern Recognition
Authors
Anthony Winterlich, Ciarán Hughes, Liam Kilmartin, Martin Glavin, Edward Jones,