Integrated region-based segmentation using color components and texture features with prior shape knowledge
نویسندگان
چکیده
Segmentation is the art of partitioning an image into different regions where each one has some degree of uniformity in its feature space. A number of methods have been proposed and blind segmentation is one of them. It uses intrinsic image features, such as pixel intensity, color components and texture. However, some virtues, like poor contrast, noise and occlusion, can weaken the procedure. To overcome them, prior knowledge of the object of interest has to be incorporated in a top-down procedure for segmentation. Consequently, in this work, a novel integrated algorithm is proposed combining bottom-up (blind) and top-down (including shape prior) techniques. First, a color space transformation is performed. Then, an energy function (based on nonlinear diffusion of color components and directional derivatives) is defined. Next, signeddistance functions are generated from different shapes of the object of interest. Finally, a variational framework (based on the level set) is employed to minimize the energy function. The experimental results demonstrate a good performance of the proposed method compared with others and show its robustness in the presence of noise and occlusion. The proposed algorithm is applicable in outdoor and medical image segmentation and also in optical character recognition (OCR).
منابع مشابه
Cue Integration and Front Evolution in Image Segmentation. (Intégration d'attributs et évolutions de fronts en segmentation d'images)
Automatic detection and selection of regions of interest inside an image is a key step in image understanding. Many studies have been dedicated to this issue during the past decades. Efficient and robust algorithms have been developed for many applications. However, most of them make use of heuristics inherent to a particular class of images. The limiting factor to obtain a general algorithm is...
متن کاملMoving Object Segmentation Using Level Set Method with Shape Prior, Color and Texture
This paper presents a method for the combination of different feature cues in a level set based moving object segmentation framework. To distinguish object from background, motion detection is firstly adopted to locate object position and obtain coarse shape prior. Moreover, the color and texture feature descriptors that represent object contour are designed in this dissertation. Then the finer...
متن کاملIntegration of Color , Edge , Shape , and Texture
We present algorithms for automatic image annotation and retrieval based on color, shape, texture, and any combination of two or more of these features. Pixel-or region (object)-based color; region-based shape; and block-or region-based texture features have been considered. Automatic region selection has been accomplished by integrating color and spatial edge features. Color, shape, and textur...
متن کاملSign Video Segmentation Using Region, Boundary Based Active Contours with Shape Priors
In this paper we proposed a new and improved concept of segmentation for sign language gestures. The algorithm presented extracts signs from video sequences under various non-static backgrounds. The signs are segmented which are normally hands and head of the signing person by minimizing the energy function of the level set fused by various image characteristics such as colour, texture, boundar...
متن کاملColor Image Coding Based on Shape-Adaptive All Phase Biorthogonal Transform
This paper proposes a color image coding algorithm based on shape-adaptive all phase biorthogonal transform (SA-APBT). This algorithm is implemented through four procedures: color space conversion, image segmentation, shape coding, and texture coding. Region-of-interest (ROI) and background area are obtained by image segmentation. Shape coding uses chain code. The texture coding of the ROI is p...
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:
- Applied Mathematics and Computer Science
دوره 20 شماره
صفحات -
تاریخ انتشار 2010