In face detection, support vector machines (SVM) and neural networks (NN) have been shown to outperform most other classication methods. While both approaches are learning-based, there are distinct advantages and drawbacks to each method: NNs are difcult to design and train but can lead to very small and efcient classiers. In comparison, SVM model selection and training is rather straightforward, and, more importantly, guaranteed to converge to a globally optimal (in the sense of training errors) solution. Unfortunately, SVM classiers tend to have large representations which are inappropriate for time-critical image processing applications. In this work, we examine various existing and new methods for simplifying support vector decision rul...
Abstract. 1 The central problem in the case of face detectors is to build a face class model. We pre...
Abstract. We show in this paper how Neural Networks can be used for Human Face Processing. In Part I...
According to support vector machines (SVMs), for those geometric approach based classification metho...
In face detection, support vector machines (SVM) and neural networks (NN) have been shown to outperf...
This paper proposes a method for computing fast approximations to support vector decision functions ...
The computer vision problem of face detection has over the years become a common high-requirements b...
We investigate the application of Support Vector Machines (SVMs) in computer vision. SVM is a learni...
Detection of patterns in images using classifiers is one of the most promising topics of research in...
We describe a fast system for the detection and localization of human faces in images using a nonlin...
We present a subspace approach to face detection with Support Vector Machine (SVMs). A linear SVM cl...
We present a novel method to enhance training set for face detection with nonlinearly generated exam...
We present a novel method to enhance training set for face detection with nonlinearly generated exam...
This publication can be retrieved by anonymous ftp to publications.ai.mit.edu. The pathname for this...
We present a new approximation scheme for support vector decision functions in object detection. In ...
We describe a new face detection algorithm based on a hierarchy of support vector classifiers (SVMs)...
Abstract. 1 The central problem in the case of face detectors is to build a face class model. We pre...
Abstract. We show in this paper how Neural Networks can be used for Human Face Processing. In Part I...
According to support vector machines (SVMs), for those geometric approach based classification metho...
In face detection, support vector machines (SVM) and neural networks (NN) have been shown to outperf...
This paper proposes a method for computing fast approximations to support vector decision functions ...
The computer vision problem of face detection has over the years become a common high-requirements b...
We investigate the application of Support Vector Machines (SVMs) in computer vision. SVM is a learni...
Detection of patterns in images using classifiers is one of the most promising topics of research in...
We describe a fast system for the detection and localization of human faces in images using a nonlin...
We present a subspace approach to face detection with Support Vector Machine (SVMs). A linear SVM cl...
We present a novel method to enhance training set for face detection with nonlinearly generated exam...
We present a novel method to enhance training set for face detection with nonlinearly generated exam...
This publication can be retrieved by anonymous ftp to publications.ai.mit.edu. The pathname for this...
We present a new approximation scheme for support vector decision functions in object detection. In ...
We describe a new face detection algorithm based on a hierarchy of support vector classifiers (SVMs)...
Abstract. 1 The central problem in the case of face detectors is to build a face class model. We pre...
Abstract. We show in this paper how Neural Networks can be used for Human Face Processing. In Part I...
According to support vector machines (SVMs), for those geometric approach based classification metho...