This paper proposes a method for computing fast approximations to support vector decision functions in the field of object detection. In the present approach we are building on an existing algorithm where the set of support vectors is replaced by a smaller, so-called reduced set of synthesized input space points. In contrast to the existing method that finds the reduced set via unconstrained optimization, we impose a structural constraint on the synthetic points such that the resulting approximations can be evaluated via separable filters. For applications that require scanning an entire image, this decreases the computational complexity of a scan by a significant amount. We present experimental results on a standard face detection database
This paper describes an algorithm for finding faces within an image. The basis of the algorithm is t...
We describe a face detection algorithm based on support vector machine (SVM). The algorithm consists...
In this paper we present a trainable method for selecting features from an overcomplete dictionary o...
This paper proposes a method for computing fast approximations to support vector decision functions ...
This paper proposes a method for computing fast approximations to sup-port vector decision functions...
We present a new approximation scheme for support vector decision functions in object detection. In ...
We describe a fast system for the detection and localization of human faces in images using a nonlin...
In face detection, support vector machines (SVM) and neural networks (NN) have been shown to outperf...
In face detection, support vector machines (SVM) and neural networks (NN) have been shown to outperf...
One of the main challenging issues in computer vision is automatic detection and recognition of obje...
The computer vision problem of face detection has over the years become a common high-requirements b...
Detection of patterns in images using classifiers is one of the most promising topics of research in...
We investigate the application of Support Vector Machines (SVMs) in computer vision. SVM is a learni...
We present a new method to select features for a face detection system using Support Vector Machines...
We present a subspace approach to face detection with Support Vector Machine (SVMs). A linear SVM cl...
This paper describes an algorithm for finding faces within an image. The basis of the algorithm is t...
We describe a face detection algorithm based on support vector machine (SVM). The algorithm consists...
In this paper we present a trainable method for selecting features from an overcomplete dictionary o...
This paper proposes a method for computing fast approximations to support vector decision functions ...
This paper proposes a method for computing fast approximations to sup-port vector decision functions...
We present a new approximation scheme for support vector decision functions in object detection. In ...
We describe a fast system for the detection and localization of human faces in images using a nonlin...
In face detection, support vector machines (SVM) and neural networks (NN) have been shown to outperf...
In face detection, support vector machines (SVM) and neural networks (NN) have been shown to outperf...
One of the main challenging issues in computer vision is automatic detection and recognition of obje...
The computer vision problem of face detection has over the years become a common high-requirements b...
Detection of patterns in images using classifiers is one of the most promising topics of research in...
We investigate the application of Support Vector Machines (SVMs) in computer vision. SVM is a learni...
We present a new method to select features for a face detection system using Support Vector Machines...
We present a subspace approach to face detection with Support Vector Machine (SVMs). A linear SVM cl...
This paper describes an algorithm for finding faces within an image. The basis of the algorithm is t...
We describe a face detection algorithm based on support vector machine (SVM). The algorithm consists...
In this paper we present a trainable method for selecting features from an overcomplete dictionary o...