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    • 5. 发明授权
    • Intelligent spatial reasoning
    • 智能空间推理
    • US07263509B2
    • 2007-08-28
    • US10411437
    • 2003-04-09
    • Shih-Jong J. LeeSeho Oh
    • Shih-Jong J. LeeSeho Oh
    • G06F12/00G06N5/02
    • G06N5/04G06K9/342G06K9/4638G06N5/025G06N99/005
    • An intelligent spatial reasoning method receives a plurality of object sets. A spatial mapping feature learning method uses the plurality of object sets to create at least one salient spatial mapping feature output. It performs spatial reasoning rule learning using the at least one spatial mapping feature to create at least one spatial reasoning rule output. The spatial mapping feature learning method performs a spatial mapping feature set generation step followed by a feature learning step. The spatial mapping feature set is generated by repeated application of spatial correlation between two object sets. The feature learning method consists of a feature selection step and a feature transformation step and the spatial reasoning rule learning method uses the supervised learning method.The spatial reasoning approach of this invention automatically characterizes spatial relations of multiple sets of objects by comprehensive collections of spatial mapping features. Some of the features have clearly understandable physical, structural, or geometrical meanings. Others are statistical characterizations, which may not have clear physical, structural or geometrical meanings when considered individually. A combination of these features, however, could characterize subtle physical, structural or geometrical conditions under practical situations. One key advantage of this invention is the ability to characterize subtle differences numerically using a comprehensive feature set.
    • 智能空间推理方法接收多个对象集。 空间映射特征学习方法使用多个对象集来创建至少一个显着的空间映射特征输出。 它使用至少一个空间映射特征来执行空间推理规则学习以创建至少一个空间推理规则输出。 空间映射特征学习方法执行空间映射特征集生成步骤,随后是特征学习步骤。 通过重复应用两个对象集之间的空间相关性来生成空间映射特征集。 特征学习方法由特征选择步骤和特征变换步骤组成,空间推理规则学习方法采用监督学习方法。 本发明的空间推理方法通过空间映射特征的综合集合自动表征多组对象的空间关系。 一些功能具有明确的理解,物理,结构或几何意义。 其他是统计特征,当单独考虑时可能没有明确的物理,结构或几何意义。 然而,这些特征的组合可以在实际情况下表征微妙的物理,结构或几何条件。 本发明的一个关键优点是能够使用综合特征集在数值上表征微妙的差异。
    • 6. 发明授权
    • Structure-guided image inspection
    • 结构导向图像检查
    • US07076093B2
    • 2006-07-11
    • US10247723
    • 2002-09-16
    • Shih-Jong J. LeeSeho Oh
    • Shih-Jong J. LeeSeho Oh
    • G06K9/00
    • G06T7/001G06T7/12G06T7/155G06T2207/20041
    • A structure-guided transformation transforms a region of an image into a region in the structure-transformed image according to the desired structure. The invention achieves efficient and accurate structure-guided processing such as filtering, detection and comparison in the transformed domain and thereby facilitates use of simple operations to enhance or detect straight lines or edges. Structure information is used to enhance and detect image features of interest even when the shape of the image structure is not regular. Both global and local structures of objects can be inspected. Global structure inspection detects gross errors in image structure; therefore side effects caused by mismatched structure-guided processing are avoided. Subtle defects along the edge of a structure can be detected by local structure inspection. Structure information guidance provides an edge detection inspection system that tolerates significant noise and contrast variations.
    • 结构引导变换根据期望的结构将图像的区域变换为结构变换图像中的区域。 本发明实现了有效和准确的结构引导处理,如变换域中的过滤,检测和比较,从而便于使用简单的操作来增强或检测直线或边缘。 即使当图像结构的形状不规则时,结构信息也用于增强和检测感兴趣的图像特征。 可以检查对象的全局和局部结构。 全局结构检查检测图像结构中的粗略错误; 因此避免了由错配的结构引导处理引起的副作用。 沿结构边缘的微小缺陷可以通过局部结构检查来检测。 结构信息指导提供了边缘检测检测系统,其容忍显着的噪声和对比度变化。
    • 9. 发明申请
    • Teachable object contour mapping for biology image region partition
    • 用于生物图像区域划分的可对象轮廓映射
    • US20120106809A1
    • 2012-05-03
    • US12925874
    • 2010-11-01
    • Shih-Jong J. LeeSeho Oh
    • Shih-Jong J. LeeSeho Oh
    • G06K9/00
    • G06K9/342G06K9/0014
    • A teachable object contour mapping method for region partition receives an object boundary and a teaching image. An object contour mapping recipe creation is performed using the object boundary and the teaching image to generate object contour mapping recipe output. An object contour mapping is applied to an application image using the object contour mapping recipe and the application image to generate object contour map output. An object region partition using the object contour map to generate object region partition output An updateable object contour mapping method receives a contour mapping recipe and a validation image. An object contour mapping is performed using the object contour mapping recipe and the validation image to generate validation contour map output. An object region partition receives a region mask to generate validation object region partition output. A boundary correction is performed using the validation object region partition to generate corrected object boundary output. An update contour mapping is performed using the corrected object boundary, the validation image and the contour mapping recipe to generate updated contour mapping recipe output.
    • 区域分区的可教对象轮廓映射方法接收对象边界和教学图像。 使用对象边界和教学图像执行对象轮廓映射配方创建,以生成对象轮廓映射配方输出。 使用对象轮廓映射配方和应用图像将对象轮廓映射应用于应用图像以生成对象轮廓图输出。 使用对象轮廓图生成对象区域分区输出的对象区域分区可更新对象轮廓映射方法接收轮廓映射配方和验证图像。 使用对象轮廓映射配方和验证图像执行对象轮廓映射以生成验证轮廓图输出。 对象区域分区接收区域掩码以生成验证对象区域分区输出。 使用验证对象区域分区执行边界校正,以生成校正对象边界输出。 使用校正的对象边界,验证图像和轮廓映射配方来执行更新轮廓映射以生成更新的轮廓映射配方输出。
    • 10. 发明申请
    • Method for kinetic characterization from temporal image sequence
    • 从时间图像序列的动力学表征方法
    • US20110274339A1
    • 2011-11-10
    • US13135711
    • 2011-07-13
    • Shih-Jong J. LeeSeho OhSamuel V. Alworth
    • Shih-Jong J. LeeSeho OhSamuel V. Alworth
    • G06K9/00
    • G06K9/00127G06K2009/3291
    • A computerized derivable kinetic characterization measurement method for live cell kinetic characterization inputs kinetic recognition data for a plurality of time frames. A single cell measurement step is performed using the kinetic recognition data for a plurality of time frames to generate single cell feature for a plurality of time frames output. The single cell feature includes cell morphological profiling feature. A kinetic measurement step uses the single cell feature for a plurality of time frames to generate kinetic feature output. A trajectory measurement step uses the single cell feature for a plurality of time frames and the kinetic feature to generate trajectory feature output. An interval measurement step uses the kinetic feature to generate interval feature output. A cell state classifier step uses the interval feature to generate cell state output. A state based measurement uses the single cell feature, the kinetic feature and the cell state to generate state based feature output.
    • 用于活细胞动力学特征的计算机可推导动力学表征测量方法输入多个时间帧的动力学识别数据。 使用多个时间帧的动力学识别数据来执行单个小区测量步骤,以生成多个时间帧输出的单个小区特征。 单细胞特征包括细胞形态分析特征。 动力学测量步骤使用多个时间帧的单细胞特征来产生动力特征输出。 轨迹测量步骤使用单个小区特征用于多个时间帧,并且所述动力特征生成轨迹特征输出。 间隔测量步骤使用动力学特征来产生间隔特征输出。 单元状态分类器步骤使用间隔特征来生成单元格状态输出。 基于状态的测量使用单细胞特征,动力学特征和细胞状态来产生基于状态的特征输出。