We introduce a new method that characterizes typical local image features (e.g., SIFT, phase feature) in terms of their distinctiveness, detectability, and robustness to image deformations. This is useful for the task of classifying local image features in terms of those three properties. The importance of this classification process for a recognition system using local features is as follows: a) reduce the recognition time due to a smaller number of features present in the test image and in the database of model features; b) improve the recognition accuracy since only the most useful features for the recognition task are kept in the model database; and c) increase the scalability of the recognition system given the smaller number of featur...
The recent years have seen the increasing popularity of a wide range of applications in Computer Vis...
This paper presents a method for extracting distinctive invariant features from images that can be u...
Two image recognition systems based on Random Local Descriptors are described. Random Local Descript...
We introduce a new method that characterizes typical local image features (e.g., SIFT [9], phase fea...
We introduce a new method that characterizes quantitatively local image descriptors in terms of thei...
Abstract. While the majority of computer vision systems are based on representing images by local fe...
The vast growth of image databases creates many challenges forcomputer vision applications, for inst...
Many Applications Of Pattern Recognition Use A Set Of Local Features For Recognition Purpose. Instea...
Local invariant features have shown to be very successful for recognition. They are robust to occlus...
Local invariant features have shown to be very successful for recognition. They are robust to occlus...
While the majority of computer vision systems are based on representing images by local features, th...
While the majority of computer vision systems are based on representing images by local features, th...
Object recognition and detection represent a relevant component in cognitive computer vision systems...
Stable local feature detection and representation is a fundamental component of many image registrat...
Abstract—In this paper, a small set of features based on local appearance and texture is applied to ...
The recent years have seen the increasing popularity of a wide range of applications in Computer Vis...
This paper presents a method for extracting distinctive invariant features from images that can be u...
Two image recognition systems based on Random Local Descriptors are described. Random Local Descript...
We introduce a new method that characterizes typical local image features (e.g., SIFT [9], phase fea...
We introduce a new method that characterizes quantitatively local image descriptors in terms of thei...
Abstract. While the majority of computer vision systems are based on representing images by local fe...
The vast growth of image databases creates many challenges forcomputer vision applications, for inst...
Many Applications Of Pattern Recognition Use A Set Of Local Features For Recognition Purpose. Instea...
Local invariant features have shown to be very successful for recognition. They are robust to occlus...
Local invariant features have shown to be very successful for recognition. They are robust to occlus...
While the majority of computer vision systems are based on representing images by local features, th...
While the majority of computer vision systems are based on representing images by local features, th...
Object recognition and detection represent a relevant component in cognitive computer vision systems...
Stable local feature detection and representation is a fundamental component of many image registrat...
Abstract—In this paper, a small set of features based on local appearance and texture is applied to ...
The recent years have seen the increasing popularity of a wide range of applications in Computer Vis...
This paper presents a method for extracting distinctive invariant features from images that can be u...
Two image recognition systems based on Random Local Descriptors are described. Random Local Descript...