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UNSUPERVISED LEARNING OF OBJECT RECOGNITION METHODS AND SYSTEMS

机译:不受监督的对象识别方法和系统的学习

摘要

Processes and systems are directed to training a neural network of an object recognition system. The processes and systems record video streams of people. Sequences of object images are extracted from each video stream, each sequence of object images corresponding to one of the people. A triplet comprising an anchor feature vector and a positive feature vector of the same object and a negative feature vector of a different object of feature vectors are formed for each sequence of object images. The anchor, positive, and negative feature vectors of each triplet are separately input to the neural network to compute corresponding output anchor, positive, and negative vectors. A triplet loss function value computed from the output anchor, positive, and negative vectors. When the triplite loss function value is greater than a threshold, the neural network is retrained using the anchor and positive feature vectors of the sequences of object images.
机译:过程和系统针对于训练对象识别系统的神经网络。流程和系统记录人员的视频流。从每个视频流中提取对象图像序列,每个对象图像序列对应于一个人。针对对象图像的每个序列,形成包括相同对象的锚特征向量和正特征向量以及不同对象的负特征向量的三元组。每个三元组的锚,正和负特征向量分别输入到神经网络,以计算相应的输出锚,正和负向量。根据输出锚点,正向量和负向量计算的三元组损失函数值。当三重损失函数值大于阈值时,使用目标图像序列的锚点和正特征向量对神经网络进行重新训练。

著录项

  • 公开/公告号WO2018126270A1

    专利类型

  • 公开/公告日2018-07-05

    原文格式PDF

  • 申请/专利权人 NOVUMIND INC.;

    申请/专利号WO2018US12079

  • 发明设计人 TAN KAR HAN;WU REN;

    申请日2018-01-02

  • 分类号G06E1;

  • 国家 WO

  • 入库时间 2022-08-21 12:43:27

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