Object Classification via Geometrical, Zernike and Legendre Moments
نویسندگان
چکیده
In many applications, different kinds of moments have been utilized to classify images and object shapes. Moments are important features used in recognition of different types of images. In this paper, three kinds of moments: Geometrical, Zernike and Legendre Moments have been evaluated for classifying 3D object images using Nearest Neighbor classifier. Experiments are conducted using ETH-80 database, which contains 80 objects.
منابع مشابه
Invariant Descriptors and Classifiers Combination for Recognition of Isolated Printed Tifinagh Characters
In order to improve the recognition rate, this document proposes an automatic system to recognize isolated printed Tifinagh characters by using a fusion of 3 classifiers and a combination of some features extraction methods. The Legendre moments, Zernike moments and Hu moments are used as descriptors in the features extraction phase due to their invariance to translation, rotation and scaling c...
متن کاملLehrstuhl F Ur Mustererkennung Und Bildverarbeitung Fast 3d Zernike Moments and -invariants
The aim of this report is threefold: First we generalize to 3D a long ago known fast algorithm for the computation of ordinary geometrical moments of 2D elds starting from what could be named cumulative moments. This is done by rst reformulating the 2D algorithm in terms of matrix operations and subsequently extending the result straightforwardly to 3D. Second, guided by the results of much res...
متن کاملMultilayer Neural Networks and Nearest Neighbor Classifier Performances for Image Annotation
The explosive growth of image data leads to the research and development of image content searching and indexing systems. Image annotation systems aim at annotating automatically animage with some controlled keywords that can be used for indexing and retrieval of images. This paper presents a comparative evaluation of the image content annotation system by using the multilayer neural networks a...
متن کاملGeometric Invariant Robust Image Hashing Via Zernike Moment
Robust image hashing methods require the robustness to content preserving processing and geometric transform. Zernike moment is a local image feature descriptor whose magnitude components are rotationally invariant and most suitable for image hashing application. In this paper, we proposed Geometric invariant robust image hashing via zernike momment. Normalized zernike moments of an image are u...
متن کاملPalmprint Verification with Moments
Palmprint verification is an approach for verifying a palmprint input by matching the input to the claimed identity template stored in a database. If the dissimilarity measure between the input and the claimed template is below the predefined threshold value, the palmprint input is verified possessing same identity as the claimed identity template. This paper introduces an experimental evaluati...
متن کامل