Classifier design is an important issue in pattern recognition. Nearest Feature Line (NFL) classifier had been proposed to enhance the prototype-representing capacity of nearest neighbor methods. Nearest Feature Space (NFS) is further proposed as a generalization of NFL. In this paper we give a formal definition and theoretical analysis on Feature Space. First, the dimensionality and coordinate origin problems in classical NFS are presented. Then, a novel NFS classifier is designed to solve the above-mentioned problems. For contrastive analysis, a case study on image recognition is carried out by using ORL database. Experimental results indicate that the proposed NFS classifier offers a better recognition performance than classical NFS, whi...
The recognition rate of the typical nonparametric method "k-Nearest Neighbor rule (kNN)" is degraded...
Nearest neighbor classification using shape context can yield highly accurate results in a number of...
The recognition rate of the typical nonparametric method “-Nearest Neighbor rule (NN) ” is degraded ...
In this paper, we propose a method, called the nearest feature midpoint (NFM), for pattern classific...
Abstract Nearest feature line is an effective classification algorithm. However, if a test sample ca...
This paper points out and analyzes the advantages and drawbacks of the Nearest Feature Line (NFL) cl...
High feature dimensionality of realistic datasets adversely affects the recognition accuracy of near...
rso nce, r En ved by uc n-li lti-l works and nearest neighbor (KNN) classifier. The proposed method ...
We consider the problems of classification and intrinsic dimension estimation on image data. A new s...
There are many paradigms for pattern classification such as the optimal Bayesian, kernel-based metho...
Perhaps the most straightforward classifier in the arsenal or machine learning techniques is the Nea...
Nearest neighbor retrieval is the task of identifying, given a database of objects and a query objec...
There are many paradigms for pattern classification. As opposed to these, this paper introduces a pa...
As a new, pattern classification method, Nearest Feature Line (NFL) provides an effective way to tac...
In this paper, we propose a coarse to fine K nearest neighbor (KNN) classifier (CFKNNC). CFKNNC diff...
The recognition rate of the typical nonparametric method "k-Nearest Neighbor rule (kNN)" is degraded...
Nearest neighbor classification using shape context can yield highly accurate results in a number of...
The recognition rate of the typical nonparametric method “-Nearest Neighbor rule (NN) ” is degraded ...
In this paper, we propose a method, called the nearest feature midpoint (NFM), for pattern classific...
Abstract Nearest feature line is an effective classification algorithm. However, if a test sample ca...
This paper points out and analyzes the advantages and drawbacks of the Nearest Feature Line (NFL) cl...
High feature dimensionality of realistic datasets adversely affects the recognition accuracy of near...
rso nce, r En ved by uc n-li lti-l works and nearest neighbor (KNN) classifier. The proposed method ...
We consider the problems of classification and intrinsic dimension estimation on image data. A new s...
There are many paradigms for pattern classification such as the optimal Bayesian, kernel-based metho...
Perhaps the most straightforward classifier in the arsenal or machine learning techniques is the Nea...
Nearest neighbor retrieval is the task of identifying, given a database of objects and a query objec...
There are many paradigms for pattern classification. As opposed to these, this paper introduces a pa...
As a new, pattern classification method, Nearest Feature Line (NFL) provides an effective way to tac...
In this paper, we propose a coarse to fine K nearest neighbor (KNN) classifier (CFKNNC). CFKNNC diff...
The recognition rate of the typical nonparametric method "k-Nearest Neighbor rule (kNN)" is degraded...
Nearest neighbor classification using shape context can yield highly accurate results in a number of...
The recognition rate of the typical nonparametric method “-Nearest Neighbor rule (NN) ” is degraded ...