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    • 1. 发明申请
    • OBJECT IDENTIFICATION APPARATUS AND METHOD FOR IDENTIFYING OBJECT
    • 对象识别装置和识别对象的方法
    • US20100205177A1
    • 2010-08-12
    • US12685551
    • 2010-01-11
    • Hiroshi SatoKatsuhiko MoriYoshinori Ito
    • Hiroshi SatoKatsuhiko MoriYoshinori Ito
    • G06F17/30
    • G06K9/00281G06K9/00288G06K9/00926G06K9/6214
    • An object identification apparatus includes an image data input unit configured to input captured image data including an object, an object identification data generation unit configured to generate data for identifying the object by extracting a feature vector from a partial area of the input image data to convert the feature vector according to the partial area, an object dictionary data storage unit configured to store object dictionary data generated from previously recorded image data, and an object identification unit configured to identify a class to which the object belongs, which is included in the image data input by the image data input unit, based on the data for identifying the object and the object dictionary data.
    • 物体识别装置包括图像数据输入单元,被配置为输入包括对象的拍摄图像数据,对象识别数据生成单元,被配置为通过从输入图像数据的部分区域提取特征向量来生成用于识别对象的数据,以转换 根据部分区域的特征向量,被配置为存储从先前记录的图像数据生成的对象词典数据的对象字典数据存储部,以及被配置为识别包含在图像中的对象所属的类的对象识别单元 基于用于识别对象的数据和对象词典数据,由图像数据输入单元输入的数据。
    • 2. 发明授权
    • Object identification apparatus and method for identifying object
    • 用于识别物体的物体识别装置和方法
    • US08819015B2
    • 2014-08-26
    • US12685551
    • 2010-01-11
    • Hiroshi SatoKatsuhiko MoriYoshinori Ito
    • Hiroshi SatoKatsuhiko MoriYoshinori Ito
    • G06F17/30
    • G06K9/00281G06K9/00288G06K9/00926G06K9/6214
    • An object identification apparatus includes an image data input unit configured to input captured image data including an object, an object identification data generation unit configured to generate data for identifying the object by extracting a feature vector from a partial area of the input image data to convert the feature vector according to the partial area, an object dictionary data storage unit configured to store object dictionary data generated from previously recorded image data, and an object identification unit configured to identify a class to which the object belongs, which is included in the image data input by the image data input unit, based on the data for identifying the object and the object dictionary data.
    • 物体识别装置包括图像数据输入单元,被配置为输入包括对象的拍摄图像数据,对象识别数据生成单元,被配置为通过从输入图像数据的部分区域提取特征向量来生成用于识别对象的数据,以转换 根据部分区域的特征向量,被配置为存储从先前记录的图像数据生成的对象词典数据的对象字典数据存储部,以及被配置为识别包含在图像中的对象所属的类的对象识别单元 基于用于识别对象的数据和对象词典数据,由图像数据输入单元输入的数据。
    • 6. 发明授权
    • Pattern processing apparatus and method, and program
    • 图案处理装置及方法及程序
    • US09117111B2
    • 2015-08-25
    • US12963568
    • 2010-12-08
    • Katsuhiko MoriMasami KatoYoshinori ItoTakahisa Yamamoto
    • Katsuhiko MoriMasami KatoYoshinori ItoTakahisa Yamamoto
    • G06K9/68G06K9/00
    • G06K9/00281
    • Even when a local area is varied, degradation in recognition accuracy and detection accuracy is suppressed. To that end, a pattern processing apparatus includes a reference local area setting portion 1802 for setting a reference local area based on the detection result of a feature point by a face organ feature point detecting portion 101, a varied local area generating portion 1803 for generating a plurality of varied local area patterns by referring to an image area near the reference local area, a similarity calculating portion 106 for calculating similarities in the reference local areas and in the varied local area patterns between the input pattern and the registered pattern, a representative similarity calculating portion 107 for calculating representative similarity from among the similarities, and a classifying portion 109 for determining a class to which the input pattern belongs.
    • 即使局部区域变化,也能够抑制识别精度和检测精度的劣化。 为此,图案处理装置包括:基准局部区域设定部1802,用于基于面部特征点检测部101的特征点的检测结果来设定基准局部区域;变化的局部区域生成部1803, 通过参考参考局部区域附近的图像区域的多个变化的局部区域图案,计算参考局部区域和输入图案与登记图案之间的变化的局部区域图案中的相似度的相似度计算部分106, 相似度计算部分107,用于从相似度中计算代表性相似度;以及分类部分109,用于确定输入模式所属的类别。