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    • 1. 发明授权
    • Image tapestry
    • 图像挂毯
    • US07653261B2
    • 2010-01-26
    • US11213080
    • 2005-08-26
    • Andrew BlakeCarsten Curt Eckard RotherSanjiv KumarVladimir Kolmogorov
    • Andrew BlakeCarsten Curt Eckard RotherSanjiv KumarVladimir Kolmogorov
    • G06K9/36
    • G06K9/469G06T11/60
    • An output image formed from at least a portion of one or more input images may be automatically synthesized as a tapestry image. To determine which portion or region of each input image will be used in the image tapestry, the regions of each image may be labeled by one of a plurality of labels. The multi-class labeling problem of creating the tapestry may be resolved such that each region in the tapestry is constructed from one or more salient input image regions that are selected and placed such that neighboring blocks in the tapestry satisfy spatial compatibility. This solution may be formulated using a Markov Random Field and the resulting tapestry energy function may be optimized in any suitable manner. To optimize the tapestry energy function, an expansion move algorithm for energy functions may be generated to apply to non-metric hard and/or soft constraints.
    • 由一个或多个输入图像的至少一部分形成的输出图像可以自动合成为挂毯图像。 为了确定在图像挂毯中将使用每个输入图像的哪个部分或区域,每个图像的区域可以由多个标签之一标记。 可以解决创建挂毯的多类标签问题,使得挂毯中的每个区域由选择和放置的一个或多个显着输入图像区域构成,使得挂毯中的相邻块满足空间兼容性。 该解决方案可以使用马尔科夫随机场来形成,并且所得到的挂毯能量函数可以以任何合适的方式进行优化。 为了优化挂毯能量函数,可以产生用于能量函数的扩展移动算法以应用于非度量硬和/或软约束。
    • 2. 发明申请
    • Image tapestry
    • 图像挂毯
    • US20060104542A1
    • 2006-05-18
    • US11213080
    • 2005-08-26
    • Andrew BlakeCarsten RotherSanjiv KumarVladimir Kolmogorov
    • Andrew BlakeCarsten RotherSanjiv KumarVladimir Kolmogorov
    • G06K9/36
    • G06K9/469G06T11/60
    • An output image formed from at least a portion of one or more input images may be automatically synthesized as a tapestry image. To determine which portion or region of each input image will be used in the image tapestry, the regions of each image may be labeled by one of a plurality of labels. The multi-class labeling problem of creating the tapestry may be resolved such that each region in the tapestry is constructed from one or more salient input image regions that are selected and placed such that neighboring blocks in the tapestry satisfy spatial compatibility. This solution may be formulated using a Markov Random Field and the resulting tapestry energy function may be optimized in any suitable manner. To optimize the tapestry energy function, an expansion move algorithm for energy functions may be generated to apply to non-metric hard and/or soft constraints.
    • 由一个或多个输入图像的至少一部分形成的输出图像可以自动合成为挂毯图像。 为了确定在图像挂毯中将使用每个输入图像的哪个部分或区域,每个图像的区域可以由多个标签之一标记。 可以解决创建挂毯的多类标签问题,使得挂毯中的每个区域由选择和放置的一个或多个显着输入图像区域构成,使得挂毯中的相邻块满足空间兼容性。 该解决方案可以使用马尔科夫随机场来形成,并且所得到的挂毯能量函数可以以任何合适的方式进行优化。 为了优化挂毯能量函数,可以产生用于能量函数的扩展移动算法以应用于非度量硬和/或软约束。
    • 5. 发明授权
    • Object tracking in video with visual constraints
    • 视频约束对象跟踪
    • US08477998B1
    • 2013-07-02
    • US13309999
    • 2011-12-02
    • Minyoung KimSanjiv KumarHenry A. Rowley
    • Minyoung KimSanjiv KumarHenry A. Rowley
    • G06K9/00
    • G06K9/00261G06K9/6214G06K9/6264G06K9/6277
    • Embodiments of the present invention relate to object tracking in video. In an embodiment, a computer-implemented method tracks an object in a frame of a video. An adaptive term value is determined based on an adaptive model and at least a portion of the frame. A pose constraint value is determined based on a pose model and at least a portion the frame. An alignment confidence score is determined based on an alignment model and at least a portion the frame. Based on the adaptive term value, the pose constraint value, and the alignment confidence score, an energy value is determined. Based on the energy value, a resultant tracking state is determined. The resultant tracking state defines a likely position of the object in the frame given the object's likely position in a set of previous frames in the video.
    • 本发明的实施例涉及视频中的对象跟踪。 在一个实施例中,计算机实现的方法跟踪视频帧中的对象。 基于自适应模型和帧的至少一部分来确定自适应项值。 基于姿态模型和帧的至少一部分来确定姿势约束值。 基于对准模型和框架的至少一部分来确定对准置信度得分。 基于自适应项值,姿态约束值和对准置信度得分,确定能量值。 基于能量值,确定合成的跟踪状态。 所得到的跟踪状态定义了给定对象在视频中的一组先前帧中的可能位置的帧中的对象的可能位置。
    • 7. 发明申请
    • ANNOTATING IMAGES
    • 提示图像
    • US20090304272A1
    • 2009-12-10
    • US12425910
    • 2009-04-17
    • Ameesh MakadiaSanjiv Kumar
    • Ameesh MakadiaSanjiv Kumar
    • G06K9/68G06K9/00
    • G06F17/241G06F17/30265G06K9/00664G06K9/46
    • Methods, systems, and apparatus, including computer program products, for generating data for annotating images automatically. In one aspect, a method includes receiving an input image, identifying one or more nearest neighbor images of the input image from among a collection of images, in which each of the one or more nearest neighbor images is associated with a respective one or more image labels, assigning a plurality of image labels to the input image, in which the plurality of image labels are selected from the image labels associated with the one or more nearest neighbor images, and storing in a data repository the input image having the assigned plurality of image labels. In another aspect, a method includes assigning a single image label to the input image, in which the single image label is selected from labels associated with multiple ranked nearest neighbor images.
    • 方法,系统和装置,包括计算机程序产品,用于自动生成用于注释图像的数据。 一方面,一种方法包括接收输入图像,从图像集合中识别输入图像的一个或多个最近邻图像,其中所述一个或多个最近邻图像中的每一个与相应的一个或多个图像相关联 标签,将多个图像标签分配给输入图像,其中从与一个或多个最近邻图像相关联的图像标签中选择多个图像标签,并且在数据存储库中存储具有分配的多个图像标签的输入图像 图像标签。 在另一方面,一种方法包括向输入图像分配单个图像标签,其中从与多个排序的最邻近图像相关联的标签中选择单个图像标签。
    • 8. 发明申请
    • SYSTEM AND METHOD OF PROVIDING TOURISTIC PATHS
    • 提供旅游景点的系统和方法
    • US20150066649A1
    • 2015-03-05
    • US12768101
    • 2010-04-27
    • Sanjiv KumarJason Weston
    • Sanjiv KumarJason Weston
    • G01C21/00G06Q30/00
    • G06Q50/14G01C21/3476G06Q30/02
    • Systems and methods provide touristic routes to users. For example, a user at a client device may request a touristic route between an initial and a final destination. A server uses the initial and final destinations to determine a shortest route. The server then defines an envelope around the route in order to identify points of interest. The identified points of interest are ranked and filtered, in order to select the most relevant points of interest. Once the points of interest are selected, the server determines a final route between the initial destination, the points of interest, and the final route. This information is then transmitted to the client device and displayed to the user. The server may also identify and transmit content associated with the final route and/or the points of interest, including, but not limited to, photos, videos, hyperlinks, and advertisements.
    • 系统和方法为用户提供旅游路线。 例如,客户端设备上的用户可以请求在初始和最终目的地之间的旅游路由。 服务器使用初始和最终目的地来确定最短路由。 然后,服务器在路线周围定义一个信封,以便识别感兴趣的点。 对所识别的兴趣点进行排序和筛选,以便选择最相关的兴趣点。 一旦选择兴趣点,服务器确定初始目的地,兴趣点和最终路线之间的最终路线。 然后将该信息发送到客户端设备并显示给用户。 服务器还可以识别和发送与最终路线和/或兴趣点相关联的内容,包括但不限于照片,视频,超链接和广告。
    • 9. 发明授权
    • Content-based image ranking
    • 基于内容的图像排名
    • US08781231B1
    • 2014-07-15
    • US12547303
    • 2009-08-25
    • Sanjiv KumarHenry A. RowleyAmeesh Makadia
    • Sanjiv KumarHenry A. RowleyAmeesh Makadia
    • G06K9/54
    • G06F17/30274G06F17/30247G06K9/6215G06K9/6224G06K2209/27
    • Methods, systems, and apparatus, including computer program products, for ranking search results for queries. The method includes calculating a visual similarity score for one or more pairs of images in a plurality of images based on visual features of images in each of the one or more pairs; building a graph of images by linking each of one or more images in the plurality of images to one or more nearest neighbor images based on the visual similarity scores; associating a respective score with each of one or more images in the graph based on data indicative of user behavior relative to the image as a search result for a query; and determining a new score for each of one or more images in the graph based on the respective score of the image, and the respective scores of one or more nearest neighbors to the image.
    • 方法,系统和装置,包括计算机程序产品,用于对查询的搜索结果进行排名。 该方法包括基于一个或多个对中的每一个中的图像的视觉特征来计算多个图像中的一对或多对图像的视觉相似性分数; 通过基于所述视觉相似性得分将所述多个图像中的一个或多个图像的每一个链接到一个或多个最近邻图像来构建图像的图; 基于表示用户相对于图像的行为的数据作为查询的搜索结果,将各个分数与图中的一个或多个图像中的每一个相关联; 以及基于所述图像的相应分数以及所述图像的一个或多个最近邻居的各个分数来确定所述图中的一个或多个图像中的每一个的新分数。
    • 10. 发明授权
    • Object tracking in video with visual constraints
    • 视频约束对象跟踪
    • US08085982B1
    • 2011-12-27
    • US12143590
    • 2008-06-20
    • Minyoung KimSanjiv KumarHenry A. Rowley
    • Minyoung KimSanjiv KumarHenry A. Rowley
    • G06K9/00G06K9/46G06K9/66
    • G06K9/00261G06K9/6214G06K9/6264G06K9/6277
    • Embodiments of the present invention relate to object tracking in video. In an embodiment, a computer-implemented method tracks an object in a frame of a video. An adaptive term value is determined based on an adaptive model and at least a portion of the frame. A pose constraint value is determined based on a pose model and at least a portion the frame. An alignment confidence score is determined based on an alignment model and at least a portion the frame. Based on the adaptive term value, the pose constraint value, and the alignment confidence score, an energy value is determined. Based on the energy value, a resultant tracking state is determined. The resultant tracking state defines a likely position of the object in the frame given the object's likely position in a set of previous frames in the video.
    • 本发明的实施例涉及视频中的对象跟踪。 在一个实施例中,计算机实现的方法跟踪视频帧中的对象。 基于自适应模型和帧的至少一部分来确定自适应项值。 基于姿态模型和帧的至少一部分来确定姿势约束值。 基于对准模型和框架的至少一部分来确定对准置信度得分。 基于自适应项值,姿态约束值和对准置信度得分,确定能量值。 基于能量值,确定合成的跟踪状态。 所得到的跟踪状态定义了给定对象在视频中的一组先前帧中的可能位置的帧中的对象的可能位置。