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Shape model-based region grouping, a method for deformable object detection and retrieval.

机译:基于形状模型的区域分组,一种用于变形对象检测和检索的方法。

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摘要

A region grouping and splitting paradigm for deformable shape detection and recognition is proposed. In the proposed paradigm, region-based feature and boundary information are combined with a deformable shape model. A statistical shape model is introduced to enforce the prior probabilities on global, parametric deformations for each object class. The approach can effectively handle cluttered images of multiple objects and images with shadows. The system avoids merging objects with the background, shadows, and adjacent objects. During segmentation, the system also recovers a shape model for each detected object. Segmentation and identification are executed simultaneously. The recovered shape models can be used in object recognition and content-based image retrieval.; The shape model employed is a 2D region-based model. Statistical methods are used in training the model from examples and during object recognition using the recovered shape parameters. The shape deformation formulation used is a combination of affine transformations and bending deformations, but other kinds of deformations can be easily implemented and employed in the algorithm. After the model training stage, the system is fully automatic in object detection and shape description.; The object detection algorithm includes three basic stages: an over-segmentation stage, a model-based region merging stage, and a model-based region splitting stage. An index tree-based model fitting method is used to accelerate the model fitting procedure. The method utilizes hierarchical clustering for coarse searching and a neural network for finer searching. Use of the index tree results in a speedup of about one order of magnitude compared to fitting with the downhill-simplex method.; Synthesized images, images taken under controlled laboratory conditions, pictures from the world wide web, and medical images from microscope are used for the experiments that test the new method's segmentation accuracy and efficiency. An image database retrieval system based on the object detection system has been implemented and tested, and results are promising.; Although in the experiments, color features are used in segmentation, the underlying formulation is more general. The algorithm can be used to detect regions of interest based on any image homogeneity predicate; e.g., texture, color, or motion.
机译:提出了一种可变形形状检测与识别的区域分组分割范式。在所提出的范例中,基于区域的特征和边界信息与可变形形状模型相结合。引入统计形状模型以对每个对象类强制执行全局参数变形的先验概率。该方法可以有效地处理多个对象的杂乱图像和带有阴影的图像。该系统避免将对象与背景,阴影和相邻对象合并。在分割期间,系统还会为每个检测到的对象恢复形状模型。分割和识别同时执行。恢复的形状模型可用于对象识别和基于内容的图像检索。所采用的形状模型是基于2D区域的模型。统计方法用于从示例中训练模型,以及在使用恢复的形状参数进行对象识别期间。所使用的形状变形公式是仿射变换和弯曲变形的组合,但是其他类型的变形可以轻松实现并在算法中使用。在模型训练阶段之后,该系统在对象检测和形状描述方面是全自动的。对象检测算法包括三个基本阶段:过度分割阶段,基于模型的区域合并阶段和基于模型的区域划分阶段。基于索引树的模型拟合方法用于加速模型拟合过程。该方法利用分层聚类进行粗略搜索,并利用神经网络进行精细搜索。与采用下坡简单方法相比,索引树的使用可以使速度提高大约一个数量级。实验中使用合成图像,在受控实验室条件下拍摄的图像,来自万维网的图片以及显微镜下的医学图像来测试新方法的分割精度和效率。基于目标检测系统的图像数据库检索系统已经实现并测试,结果是有希望的。尽管在实验中,颜色特征被用于分割,但潜在的配方更为通用。该算法可用于基于任何图像均匀性谓词检测感兴趣区域;例如纹理,颜色或运动。

著录项

  • 作者

    Liu, Lifeng.;

  • 作者单位

    Boston University.;

  • 授予单位 Boston University.;
  • 学科 Computer Science.
  • 学位 Ph.D.
  • 年度 2001
  • 页码 192 p.
  • 总页数 192
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 自动化技术、计算机技术;
  • 关键词

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