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Motion-Compensated Noise Reduction of B &W Motion Picture Films EE392J Final Project ZHU Xiaoqing March, 2002.

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Presentation on theme: "Motion-Compensated Noise Reduction of B &W Motion Picture Films EE392J Final Project ZHU Xiaoqing March, 2002."— Presentation transcript:

1 Motion-Compensated Noise Reduction of B &W Motion Picture Films EE392J Final Project ZHU Xiaoqing March, 2002

2 Background/Motivation Digitization of conventional video data Achieving motion picture films Major artifacts of B&W motion picture films: Blotches: “dirty” spots and patches Scratch lines Intensity instability(illumination fluctuation) … Previous work General denoising: joint filtering Line Scratch: model-based detection & removal Blotchy noise: seldom addressed specifically My Work

3 Characteristic of Blotchy Noise They are: Arbitrary shape & size Obvious contrast against background Non-persisting in position They might NOT: Be purely black/white Have clear border Typical Blotches

4 Problems & Challenges Huge amount of data Restrict computational complexity Automatic processing preferred Motion estimation tricked by : Presence of noise Illumination Change Blurry scene for fast motion … Automatic detection not easy Blotchy noise not readily modeled Decision rely on motion compensated results

5 Proposed Scheme Blotch Detection Motion Detection Motion Estimation Write out Frames Read in Frames MC Filtering Temporal Median Filter Section-wise Pixel-wise Frame-wise Window=5 ‘sandwiched’ A B

6 Pre-processing Five-tap temporal median filter Effectiveness: Generally denoising the sequence Already removed blotchy noises Introduced artifacts Blurring of spatial details at regions w/ motion missing fast moving lines

7 Joint Motion/Noise Detection Section-wise scanning of each frame 8*8 sections, non-overlapped “sandwiched” decision-making Two stage detection: 1 st step: “change” detection Criterion: Mean Absolute Difference(MAD) & “Edgy Area” Original frame vs. filtered frame 2 nd step: motion or noise Criterion: ratio of MAD (should be consistent) Reject changes due to blotchy noise

8 Motion Trajectory Estimation Only computed for detected sections Dense motion vector field estimation Block-matching: Neighboring block for each pixel: 9*9 Translational model assuming smoothness of MVF Full search search range (-16, +16) weighted MAE criterion Error weighted by reciprocal of frame difference (A-B) rejecting noisy data

9 Post-processing Goal: remove artifact with MC-filtering Available versions of the frame Original Temporally median-filtered Motion compensated (bi-directional) Modification strategy: Linear combination Median filter (spatial/temporal/joint) Hybrid method (with edge information)

10 Result Demo

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