首页> 外国专利> METHOD FOR TRAINING AND OPERATING AN ARTIFICIAL NEURAL NETWORK CAPABLE OF MULTITASKING, ARTIFICIAL NEURAL NETWORK CAPABLE OF MULTITASKING AND APPARATUS

METHOD FOR TRAINING AND OPERATING AN ARTIFICIAL NEURAL NETWORK CAPABLE OF MULTITASKING, ARTIFICIAL NEURAL NETWORK CAPABLE OF MULTITASKING AND APPARATUS

机译:用于训练和操作一种能够进行多任务处理的人工神经网络的方法,能够提供多任务和设备的人工神经网络

摘要

The invention relates to an improved option for using a multitasking artificial neural network (KNN). In particular, the invention proposes a method for training a multitasking KNN (110). According to the invention, a first path (P1) for a first information flow through the KNN (110) is provided, wherein the first path (P1) couples an input layer (120) of the KNN (110) to at least one cross-task intermediate layer (130) of the KNN (110), which is common for a plurality of differing tasks of the KNN (110), and the first path (P1) couples the at least one cross-task intermediate layer to a respective task-specific KNN section (140) from the plurality of differing tasks (A, B). Furthermore, first training data for training cross-task parameters, which are common to the plurality of differing tasks of the KNN (110), is supplied via the input layer (120) and the first path (P1). In addition, at least one task-specific, second path (P2) for a second information flow, which is different from the first information flow, through the KNN (110) is provided, wherein the second path (P2) couples the input layer (120) of the KNN (110) to only one part of the task-specific KNN sections (140) from the plurality of differing tasks, and second training data for training task-specific parameters is supplied via the second path (P2).
机译:本发明涉及使用多任务人工神经网络(KNN)的改进选项。特别地,本发明提出了一种用于训练多任务knn(110)的方法。根据本发明,提供了一种通过KNN(110)流过kNN(110)的第一路径(P1),其中,第一路径(P1)将KNN(110)的输入层(120)耦合到至少一个交叉KNN(110)的任务中间层(130),这对于KNN(110)的多个不同的任务是常见的,并且第一路径(P1)将至少一个交叉任务中间层耦合到相应的特定于多个不同任务(A,B)的特定于任务的KNN部分(140)。此外,通过输入层(120)和第一路径(P1)提供用于训练跨任务参数的训练跨任务参数的训练数据,该跨任务参数是knn(110)的多个不同任务。另外,提供了至少一个特定于第二信息流的任务特定的第二路径(P2),其通过KNN(110)不同于第一信息流,其中第二路径(P2)耦合输入层(120)knn(110)仅从多个不同任务的任务特定KNN部分(140)的一部分,以及通过第二路径(P2)提供用于训练任务特定参数的第二训练数据。

著录项

  • 公开/公告号EP3918528A1

    专利类型

  • 公开/公告日2021-12-08

    原文格式PDF

  • 申请/专利权人 ROBERT BOSCH GMBH;

    申请/专利号EP20200700480

  • 发明设计人 BARIAMIS DIMITRIOS;

    申请日2020-01-10

  • 分类号G06N3/04;G06N3/08;

  • 国家 EP

  • 入库时间 2022-08-24 22:41:28

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