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An Adaptive Image Enhancement Algorithm for Face Detection By Lizuo Jin, Shin’ichi Satoh, and Masao Sakauchi. ECE 738 In Young Chung.

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Presentation on theme: "An Adaptive Image Enhancement Algorithm for Face Detection By Lizuo Jin, Shin’ichi Satoh, and Masao Sakauchi. ECE 738 In Young Chung."— Presentation transcript:

1 An Adaptive Image Enhancement Algorithm for Face Detection By Lizuo Jin, Shin’ichi Satoh, and Masao Sakauchi. ECE 738 In Young Chung

2 Outline  Motivation – Problem in face detection  Suggestion  Basic idea of suggestion  Approach  Adaptive Image Enhancement Algorithm  Result and Comparison  Conclusion

3 Problem in Face Detection?  Almost every face-detection methods depends on the intensity values of image  Face detection under unconstrained condition result in failure because of the drastic variation of pixel intensity in face regions  Image enhancement by intensity transformation can reduce this problem, with histogram equalization (HE).  HE applied to images with faces on a very light background, it may produce very dark face regions  face detection failure. HE After Histogram Equalization

4 Suggestion of solution  Solution? An adaptive image enhancement algorithm which is adapt to the intensity distribution within an image.

5 Basic idea 1. Why don’t we make it even? Entropy of darker pixels = Entropy of lighter pixels 2. Face is made up of many pixels Face pixels make a cluster in histogram  We can histogram ridge analysis technique

6 Approaches I.  EER (Entropy Error Rate) as an information theoretic measure represents the tendency of the information distribution within an image If EER is positive and large  the information lies mainly in the darker pixels If EER is negative large  the information is lies mainly in the lighter pixels  Goal : minimizing the EER Where, S : estimate the relative position of the mean in histogram H D,H B : information in darker pixels and lighter pixels respectively H D,H B : the average entropy in either side

7 Approaches II.  Histogram Ridges Analysis : suggested in the paper “A fast histogram-clustering approach for multi-level thresholding” by Du-Ming Tsau and Ting-Hsiuing Chen  Important parameter: the distance between the leftmost and rightmost ridge because this distance is related with the intensity range of valid content in the image.

8 Adaptive Enhancement Algorithm Step 1. Extract Intensity Value in the input image

9 Step 2. Compute the intensity histogram of the input image

10 Step 3. Threshold the intensity histogram Against noise and stretch to [0,255] Smoothing with Gaussian smoothing Operator with variance = 2.0 Find valid ridges and distance between the ridges (Dr)  this is related with the intensity range of valid content in the image.

11 Step 4. Filter the histogram obtained in step 2 with a filtering coefficient to eliminate noise or unimportant details

12 Step 5. Compress the detail region and expend important region by using entropy in darker and lighter side

13 Step 6. Minimum EER finding process After gamma correction with the parameter obtained in minimum EER F.P

14 Results Before, Histogram Enhancement After Adaptive Enhancement

15 Comparison I. Classical histogram equalization (HE) Adaptive histogram enhancement (AE)

16 Comparison II. Original imageHE AE Image with very light back ground

17 Conclusion and future works  Image enhancement is very important technique for face detection, especially in the images acquired in unconstrained illumination condition  Unsuitable enhancement can increase detection- failure rate  AE algorithm estimate the image quality base on EER and intensity histogram and select best transform  It performs much better than classical HE method

18 Question ?


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