Texture Classification using a Linear Configuration Model based Descriptor
نویسندگان
چکیده
Texture classification can be concluded as the problem of classifying images according to textural cues, that is, categorizing a texture image obtained under certain illumination and viewpoint condition as belonging to one of the pre-learned texture classes. Therefore, it would mainly pass through two steps: image representation or description and classification. In this paper, we focus on the feature extraction part that aims to extract effective patterns to distinguish different textures. Among various feature extraction methods, local features have performed well in real-world applications, such as LBP[4], SIFT [2] and Histogram of Oriented Gradients (HOG) [1]. Representative methods also include grey level difference or co-occurrence statistics [10], and methods based on multi-channel filtering or wavelet decomposition [3, 5, 7]. To learn representative structural configuration from texture images, Varma et al. proposed texton methods based on the filter response space and local image patch space [8, 9]. We show in this paper the descriptor MiC that encodes image microscopic configuration by a linear configuration model. The final local configuration pattern (LCP) feature integrates both the microscopic features represented by optimal model parameters and local features represented by pattern occurrences. To be specific, microscopic features capture image microscopic configuration which embodies image configuration and pixel-wise interaction relationships by a linear model. The optimal model parameters are estimated by an efficient least squares estimator. To achieve rotation invariance, which is a desired property for texture features, Fourier transform is applied to the estimated parameter vectors. Finally, the transformed vectors are concatenated with local pattern occurrences to construct LCPs. As this framework is unsupervised, it could avoid the generalization problem suffered by other statistical learning methods. To model the image configuration with respect to each pattern, we estimate optimal weights, associating with intensities of neighboring pixels, to linearly reconstruct the central pixel intensity. This can be expressed by:
منابع مشابه
MULTI CLASS BRAIN TUMOR CLASSIFICATION OF MRI IMAGES USING HYBRID STRUCTURE DESCRIPTOR AND FUZZY LOGIC BASED RBF KERNEL SVM
Medical Image segmentation is to partition the image into a set of regions that are visually obvious and consistent with respect to some properties such as gray level, texture or color. Brain tumor classification is an imperative and difficult task in cancer radiotherapy. The objective of this research is to examine the use of pattern classification methods for distinguishing different types of...
متن کاملAutomatic classification of Non-alcoholic fatty liver using texture features from ultrasound images
Background: Accurate and early detection of non-alcoholic fatty liver, which is a major cause of chronic diseases is very important and is vital to prevent the complications associated with this disease. Ultrasound of the liver is the most common and widely performed method of diagnosing fatty liver. However, due to the low quality of ultrasound images, the need for an automatic and intelligent...
متن کاملAutomatic Face Recognition via Local Directional Patterns
Automatic facial recognition has many potential applications in different areas of humancomputer interaction. However, they are not yet fully realized due to the lack of an effectivefacial feature descriptor. In this paper, we present a new appearance based feature descriptor,the local directional pattern (LDP), to represent facial geometry and analyze its performance inrecognition. An LDP feat...
متن کاملA Novel Feature-extraction Algorithm for Efficient Classification of Texture Images
In this paper, a non-linear model is investigated for texture characterization and retrieval. The power of our descriptors was validated both in the context of a classification system and as part of an information retrieval approach. For this purpose, we have used four different texture databases and we have compared our descriptor with state of the art algorithms. In most of experiments, our a...
متن کاملNew Pseudo-CT Generation Approach from Magnetic Resonance Imaging using a Local Texture Descriptor
Background: One of the challenges of PET/MRI combined systems is to derive an attenuation map to correct the PET image. For that, the pseudo-CT image could be used to correct the attenuation. Until now, most existing scientific researches construct this pseudo-CT image using the registration techniques. However, these techniques suffer from the local minima of the non-rigid deformation energy f...
متن کاملذخیره در منابع من
با ذخیره ی این منبع در منابع من، دسترسی به آن را برای استفاده های بعدی آسان تر کنید
عنوان ژورنال:
دوره شماره
صفحات -
تاریخ انتشار 2011