241 research outputs found

    A Fully Automatic Segmentation Method for Breast Ultrasound Images

    Get PDF
    Breast cancer is the second leading cause of death of women worldwide. Accurate lesion boundary detection is important for breast cancer diagnosis. Since many crucial features for discriminating benign and malignant lesions are based on the contour, shape, and texture of the lesion, an accurate segmentation method is essential for a successful diagnosis. Ultrasound is an effective screening tool and primarily useful for differentiating benign and malignant lesions. However, due to inherent speckle noise and low contrast of breast ultrasound imaging, automatic lesion segmentation is still a challenging task. This research focuses on developing a novel, effective, and fully automatic lesion segmentation method for breast ultrasound images. By incorporating empirical domain knowledge of breast structure, a region of interest is generated. Then, a novel enhancement algorithm (using a novel phase feature) and a newly developed neutrosophic clustering method are developed to detect the precise lesion boundary. Neutrosophy is a recently introduced branch of philosophy that deals with paradoxes, contradictions, antitheses, and antinomies. When neutrosophy is used to segment images with vague boundaries, its unique ability to deal with uncertainty is brought to bear. In this work, we apply neutrosophy to breast ultrasound image segmentation and propose a new clustering method named neutrosophic l-means. We compare the proposed method with traditional fuzzy c-means clustering and three other well-developed segmentation methods for breast ultrasound images, using the same database. Both accuracy and time complexity are analyzed. The proposed method achieves the best accuracy (TP rate is 94.36%, FP rate is 8.08%, and similarity rate is 87.39%) with a fairly rapid processing speed (about 20 seconds). Sensitivity analysis shows the robustness of the proposed method as well. Cases with multiple-lesions and severe shadowing effect (shadow areas having similar intensity values of the lesion and tightly connected with the lesion) are not included in this study

    Local and deep texture features for classification of natural and biomedical images

    Get PDF
    Developing efficient feature descriptors is very important in many computer vision applications including biomedical image analysis. In the past two decades and before the popularity of deep learning approaches in image classification, texture features proved to be very effective to capture the gradient variation in the image. Following the success of the Local Binary Pattern (LBP) descriptor, many variations of this descriptor were introduced to further improve the ability of obtaining good classification results. However, the problem of image classification gets more complicated when the number of images increases as well as the number of classes. In this case, more robust approaches must be used to address this problem. In this thesis, we address the problem of analyzing biomedical images by using a combination of local and deep features. First, we propose a novel descriptor that is based on the motif Peano scan concept called Joint Motif Labels (JML). After that, we combine the features extracted from the JML descriptor with two other descriptors called Rotation Invariant Co-occurrence among Local Binary Patterns (RIC-LBP) and Joint Adaptive Medina Binary Patterns (JAMBP). In addition, we construct another descriptor called Motif Patterns encoded by RIC-LBP and use it in our classification framework. We enrich the performance of our framework by combining these local descriptors with features extracted from a pre-trained deep network called VGG-19. Hence, the 4096 features of the Fully Connected 'fc7' layer are extracted and combined with the proposed local descriptors. Finally, we show that Random Forests (RF) classifier can be used to obtain superior performance in the field of biomedical image analysis. Testing was performed on two standard biomedical datasets and another three standard texture datasets. Results show that our framework can beat state-of-the-art accuracy on the biomedical image analysis and the combination of local features produce promising results on the standard texture datasets.Includes bibliographical reference

    Multi-dimensional local binary pattern texture descriptors and their application for medical image analysis

    Get PDF
    Texture can be broadly stated as spatial variation of image intensities. Texture analysis and classification is a well researched area for its importance to many computer vision applications. Consequently, much research has focussed on deriving powerful and efficient texture descriptors. Local binary patterns (LBP) and its variants are simple yet powerful texture descriptors. LBP features describe the texture neighbourhood of a pixel using simple comparison operators, and are often calculated based on varying neighbourhood radii to provide multi-resolution texture descriptions. A comprehensive evaluation of different LBP variants on a common benchmark dataset is missing in the literature. This thesis presents the performance for different LBP variants on texture classification and retrieval tasks. The results show that multi-scale local binary pattern variance (LBPV) gives the best performance over eight benchmarked datasets. Furthermore, improvements to the Dominant LBP (D-LBP) by ranking dominant patterns over complete training set and Compound LBP (CM-LBP) by considering 16 bits binary codes are suggested which are shown to outperform their original counterparts. The main contribution of the thesis is the introduction of multi-dimensional LBP features, which preserve the relationships between different scales by building a multi-dimensional histogram. The results on benchmarked classification and retrieval datasets clearly show that the multi-dimensional LBP (MD-LBP) improves the results compared to conventional multi-scale LBP. The same principle is applied to LBPV (MD-LBPV), again leading to improved performance. The proposed variants result in relatively large feature lengths which is addressed using three different feature length reduction techniques. Principle component analysis (PCA) is shown to give the best performance when the feature length is reduced to match that of conventional multi-scale LBP. The proposed multi-dimensional LBP variants are applied for medical image analysis application. The first application is nailfold capillary (NC) image classification. Performance of MD-LBPV on NC images is highest, whereas for second application, HEp-2 cell classification, performance of MD-LBP is highest. It is observed that the proposed texture descriptors gives improved texture classification accuracy

    3-D STEREOSCOPIC MODELING OF THE TESLA'S LONG ISLAND

    Get PDF
    This paper presents in detail the methods for realization of the basic software infrastructure for the conversion of 3-D animation of Tesla’s laboratory in Long Island to modern stereoscopic 3-D formats. Modeling of Tesla’s lab is done in cooperation with the Nikola Tesla Museum in Belgrade on a project entitled “Computer Simulation and Modeling of the Original Patents of Nikola Tesla”  approved by the Ministry of Education and Science of the Republic of Serbia. In recent years, there has been a revolution in the field of 3-D technology, so it is clear that this will be the strategic direction of the progressing of television, cinema screenings and presentations in the future. Using modern technology for generating and conversion to stereoscopic 3-D format, the authors show in detail the procedure that was used in the realization of this segment of the project. The complete improved 3D developing pipeline from the original photograph to the stereoscopic 3D real-time model is also presented. The novelty in the phase of semiautomatic materialization of the wire models is also described

    Hox3 duplication and divergence in the Lepidoptera

    Get PDF
    Using the Speckled Wood Butterfly Pararge aegeria as the model species, this thesis presents the possible evolutionary significance of a set of duplications found in the Hox cluster of the Lepidoptera, called the Special Homeobox genes. An annotation of this duplicated cluster across a wide number of Lepidoptera was performed in order to assess patterns of duplication and loss across the order. The sequences recovered revealed a large amount of variation associated with the duplicate genes, indicating these are evolving very rapidly in different lineages. Patterns of sequence variation were examined to ascertain whether the observed variation was maintained due to selection at three separate levels of divergence: within the Ditrysia, within the more recently diverged Heliconius genus, and at the intraspecific level by quantifying nucleotide polymorphism within Pararge aegeria. Selective pressures were found to be operating between paralogous and orthologous genes, suggesting these have evolved, in part, under positive selection. The potential function of the duplicates was examined by means of CRISPR/Cas9 geneome editing, but revealed inconclusive results. Genome editing, however, was shown to be largely applicable to P. aegeria, and resulted in consistent mutations associated with wing patterning genes. The potential significance of the duplications for Lepidopeteran biology are discussed, as well as future applications for genome editing techniques in P. aegeria
    corecore