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A Hybrid Strategy for Improving Illumination-Balance of Degraded Text-Photo Images
Chair Professor Chin-Chen Chang Feng Chia University National Chung Cheng University National Tsing Hua University
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Outline Introduction The proposed scheme Experimental results
Conclusions
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Introduction (1/5) Digital archive
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Introduction (2/5) Uneven Illumination distribution
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Introduction (3/5) Text image balance scheme (Degraded Image)
(Processed Image)
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Introduction (4/5) Text-photo image? (Text-photo Image)
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Introduction (5/5) The proposed scheme (Degraded Image)
(Processed Image)
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Flowchart (Photo Part) (Balanced) (Degraded Image) (Processed Image)
(Text Part) (Balanced)
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Four Phases of Proposed Scheme
Edge Detection Phase Object Classification Phase Text Balance Phase Photo Balance Phase
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Edge Detection Phase (1/5)
Sobel edge detection -1 1 -2 2 -2 -1 1 2 -1 -2 1 2 1 2 -1 -2 (Detector (1). 0°) (Detector (2). 45°) (Detector (3). 90°) (Detector (4). 135°)
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Edge Detection Phase (2/5)
Ex. 1: Edge area 20 10 90 -1 1 -2 2 (Detector (1). 0°) (Original Image) (20×-1) + (10×0) + (90×1) + (20×-2) + (10×0) + (90×2) + (20×-1) + (10×0) + (90×1) = 280
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Edge Detection Phase (3/5)
Ex. 2: Smooth area 20 10 -1 1 -2 2 (Detector (1). 0°) (Original Image) (20×-1) + (10×0) + (10×1) + (20×-2) + (10×0) + (10×2) + (20×-1) + (10×0) + (10×1) = 40
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Edge Detection Phase (4/5)
Average edge image Edge Image 0° Edge Image 45° Edge Image 90° Edge Image 135° + + + = 4 (Average Edge Image) Edge map > Threshold edge (255) ≦ Threshold non-edge (0) (Average Edge Image)
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Edge Detection Phase (5/5)
Ex: threshold = 55 10 80 20 90 60 70 30 255 (Average Edge Image) (Edge Map) (Edge Map)
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Object Classification Phase (1/3)
Object detection Object 1 255 10 Object 2 Object 3 (Edge Map)
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Object Classification Phase (2/3)
Mark square areas (Edge Map) (Objects)
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Object Classification Phase (3/3)
Classification according to object size (Text Part) (Photo Part)
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Text Balance Phase (1/4) Flowchart (Processed Text Image)
(Light Distribution Image)
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Text Balance Phase (2/4) Compute background Ex: 100 text 200 100 120
LIT: The light distribution image for text part N: The total number of pixels Ex: 100 text 200 100 120 140 160 180 200 (Text Part) . (Text Objects)
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Text Balance Phase (3/4) Illumination Balance Ex: bf = 230
(LIT) (Original Image) (Balanced Image) Ex: bf = 230 bf : The bright factor Oi: The ith pixel of original image BI : The balanced image
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Text Balance Phase (4/4) Enhance contrast Ex: C1=30, C2=1.2
(Original) (Enhanced) Ex: 80 60 96 72 40 120 60 12 108 36 BI : Balanced image C1, C2 : Contrast parameters C1=30, C2=1.2 (40 – 30) × 1.2 = 12 (120 – 30) × 1.2 = 108 (60 – 30) × 1.2 = 36
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Photo Balance Phase (1/4)
Purpose (Degraded Image) (Processed)
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Photo Balance Phase (2/4)
Enhance brightness Ex: pvi= 53, pvi is in Case3 pvi= pvi+ 25= 78 pvi : The ith pixel value (Enhanced)
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Photo Balance Phase (3/4)
Enhance the contrast of each photo object A dynamic histogram equalization scheme (2007) (Object 1) (Object 2) (Object 1 processed) (Object 2 processed)
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Photo Balance Phase (4/4)
Ex: histogram equalization Contrast Enhancement (Object 1) (Object 1 processed) (Original histogram) (Contrast enhanced)
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Final Phase (Balanced) (Processed Image) (Balanced)
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Experimental Results (1/7)
Scanned Images Artificial Scanned-Liked Image 512×512 pixels VLB: S.C. Hsia and P.S. Tsai (2005) LLB: S.C. Hsia, M.H. Chen and Y.M. Chen (2006)
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Experimental Results (2/7)
Scanned text-photo images 1 2 The degraded image VLB LLB The proposed scheme 3 4
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Experimental Results (3/7)
Scanned text images 1 2 The degraded image VLB LLB The proposed scheme 3 4
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Experimental Results (4/7)
Scanned-liked images (Original Image) (Scanned-liked Image)
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Experimental Results (5/7)
Scanned-liked text-photo images 1 2 The Scanned-liked Image VLB LLB The proposed scheme 3 4
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Experimental Results (6/7)
Scanned-liked text images 1 2 The Scanned-liked Image VLB LLB The proposed scheme 3 4
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Experimental Results (7/7)
Compute PSNR values Scanned-liked text images Scanned-liked text-photo image
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Conclusions Practical for text and text-photo images
Satisfactory image quality
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