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A Gradient-Based Probabilistic Method for Image Feature Extraction

机译:基于梯度的图像特征提取概率方法

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Image shape feature extraction by locating the exact shape boundaries has been applied in numerous research areas such as object tracking, content based image and video retrieval, robotics and biomedical imaging. Deformable active contour (snake) methods have been widely used. However, snake methods have limitations in requirement of manually initialized contour, slow convergence, random curve movement in case of missing energy forces and noise sensitivity. We develop a probabilistic model using gradient vector flow field for identifying contour curves and applications in brain MRI feature extraction. Our algorithm method performed better than popular snake-based algorithms on the simulated images and brain MR images.
机译:通过定位精确的形状边界的图像形状特征提取已应用于许多研究领域,例如对象跟踪,基于内容的图像和视频检索,机器人和生物医学成像。可变形的活性轮廓(蛇)方法已被广泛使用。然而,蛇形方法在需要手动初始化轮廓,缓慢的收敛性,随机曲线运动时具有局限性,在缺失能量力和噪声灵敏度的情况下。我们使用梯度向量流场开发概率模型,用于识别脑MRI特征提取中的轮廓曲线和应用。我们的算法方法比模拟图像和脑MR图像更好地执行了基于流行的蛇类算法。

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