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Anti-Faces for Detection
Daniel Keren Rita Osadchy Haifa University Craig Gotsman Technion Journal Version:
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Problem Definition Given a set T of training images from an object class , locate all instances of any member of in test image P. Images from training set Test image
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Our Contribution Simple detection process (inner product). Can be implemented by convolution. Very fast: For an image of N pixels, usually requires operations, where Implicit representation. Uses natural image statistics. Simple independent detectors.
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Previous Work Eigenfaces and Eigenface Based Approaches.
Neural Networks. Support Vector Machines. Fisher Linear Discriminant.
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Eigenfaces for Recognition M. Turk and A. Pentland
W B
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Eigenface Based Approaches
Probabilistic Visual Learning for Object Representation. B. Moghaddam and A. Pentland DIFS DFFS x Visual Learning Recognition of 3-D from Appearance. H. Murase and S. Nayar
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Neural Networks for Face Detection
Neural Network Based Face Detection. H. Rowly, S. Baluja, and T. Kanade Rotation Invariant Neural Network Based Face Detection.
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Training Support Vector Machines
Training Support Vector Machines: an Application to Face Detection. E. Osuna, R. Freund, and F. Girosi Training Support Vector Machines for 3-D Object Recognition. M. Pontil and A. Verri A General Framework for Object Detection. C.P. Papageorgiou, M. Oren, and T. Poggio
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“Separating functioal”
Training Support Vector Machines margin Support Vectors “Separating functioal”
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Fisher Linear Discriminant
Eigenfaces vs. Fisherfaces: Recognition Using Class Specific Linear Projection P. N. Belhumeur, P. Hespanha, and D. J. Kriegman
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Drawbacks of the Described Methods
Eigenface based methods: Very high dimension of face-space is needed. Distance to face-space is a weak discriminator between class images and non-class natural images. Neural networks, SVM: Long learning time. Strong training data dependency. Many operations on input image are required. Fisher Linear Discriminant : Too simple.
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Implicit Set Representation
Implicit set representation is more appropriate than an explicit one, for determining whether an element belongs to a set. The value of is a very simple indicator as to whether is close to the circle or not.
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In general: characterize a set P by
If is the class to be detected, the following should hold: P . should be simple to compute. should be small. If , there should be a low probability that, for every , .
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However… this fails miserably:
Implicit Set Representation The natural extension of this idea to detection is: Find functionals which attain a small value on the object class , and use them for detection. The first guess: inner product with vectors orthogonal to ‘s elements. So, iff ,… However… this fails miserably:
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Orthogonal detectors for pocket calculator
Many false alarms (and failure to detect true instance) when using these detectors
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Our model for random smooth.
Implicit Set Representation Conclusion: It’s not enough for the detectors to attain small values on the object class, they also have to attain larger values on “random” images. Our model for random smooth.
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Implicit Approach for Detection
To Summarize: The functionals used for detection are linear: where d is a detector for a class , I an input image, and n the image size. The functional F(I) must be large for random natural (smooth) images, and small for the images of Otherwise, there are many false alarms.
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Class Detection Using Smooth Detectors
Boltzman distribution for smooth images: It follows that where are the DCT coefficients of d. since for to be large, d is smooth. should be concentrated in small
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Class Detection Using Smooth Detectors
The average response of a smooth detector on a smooth image is large. This relation was checked on 6,500 different detectors, each one on 14,440 natural images.
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Relationship between theoretical and empirical expectation of squared inner product with detector d
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Class Detection Using Smooth Detectors
Trade-off between Smoothness of the detector. Orthogonality to the training set. Detection:
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Schematic Description of the Detection
“Direction of smoothness” Templates Natural images Eigenface method positive set Anti-face method positive set
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False Alarms in Detection
P - f.a. probability. P << 1. m independent detectors give The detectors are independent if are independent random variables. This holds iff
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Finding the Detectors Choose an appropriate value M for 2 Minimize
It should be substantially smaller than the absolute value of the inner product of two “random images”. 2 Minimize The optimization is performed in DCT domain, and the inverse DCT transform of the optimum is the desired detector.
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Finding the Detectors Using a binary search on , set it so that
Incorporate the condition for independent detectors into the optimization scheme to find the other detectors.
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Three of the “Esti” images The first four “anti-Esti” detectors
Detection result: all ten “Esti” instances were located, without false alarms
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Eigenface method with the subspace of dimension 100
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Number of Eigenvalues for 90% Energy
Detection Results Number of Eigenvalues for 90% Energy
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Detection Results The results refer to “rotate + scale” case.
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Fisher Linear Discriminant Results:
“Esti” class Three random image sets
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(A) (B) (C) (A) and (B) Anti-Faces with 8 detectors. (C) Eigenface method with the subspace of dimension 8. Eigenface method requires the subspace of dimension 30 for correct detection.
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Detection of 3D objects from the COIL database
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Detection of COIL objects on arbitrary background
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Detection Under Varying Illumination:
Model object and shadows. Detect objects and shadows in the logarithm of the image. Remove “shadow only” instances, using “shadow only” detectors.
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Osadchy, Keren: “Detection Under Varying Illumination and Pose”, ICCV 2001.
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Event Detection psychology psychological crocodile anthology
“Anti-psychology”
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Future Research Develop a general face detector.
Develop a detector with non-convex positive set. Speech recognition.
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