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Eigenfaces As we discussed last time, we can reduce the computation by dimension reduction using PCA –Suppose we have a set of N images and there are c.

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Presentation on theme: "Eigenfaces As we discussed last time, we can reduce the computation by dimension reduction using PCA –Suppose we have a set of N images and there are c."— Presentation transcript:

1 Eigenfaces As we discussed last time, we can reduce the computation by dimension reduction using PCA –Suppose we have a set of N images and there are c classes –We define a linear transformation –The total scatter of the training set is given by –

2 For PCA, it chooses to maximize the total scatter of the transformed feature vectors, which is –Mathematically, we have Eigenfaces

3 One Difficulty: Lighting The same person with the same facial expression, and seen from the same viewpoint, can appear dramatically different when light sources illuminate the face from different directions.

4 Another Difficulty: Facial Expression Facial expressions changes also create variations that PCA will hold unto, yet these variations may confuse recognition.

5 Fisherfaces The idea here is to try to throw out the variability that is not useful for recognition and hold onto the variability that is…

6 Fisherfaces Using Fisher’s linear discriminant to find class-specific linear projections –More formally, we define the between-class scatter –The within-class scatter –Then we choose to maximize the ratio of the determinant of the between-class scatter matrix to the within-class scatter of the projected samples

7 Fisherfaces That is,

8 Comparison of PCA and FDA

9 Fisherfaces Singularity problem –The within-class scatter is always singular for face recognition –This problem is overcome by applying PCA first, which can be called PCA/LDA

10 Experimental Results Variation in lighting

11 Experimental Results

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14 Variations in Facial Expression, Eye Wear, and Lighting

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20 Glasses Recognition Glasses / no glasses recognition


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