Invention Grant
US09346167B2 Trainable convolutional network apparatus and methods for operating a robotic vehicle
有权
可操作的卷积网络装置和用于操作机器人车辆的方法
- Patent Title: Trainable convolutional network apparatus and methods for operating a robotic vehicle
- Patent Title (中): 可操作的卷积网络装置和用于操作机器人车辆的方法
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Application No.: US14265113Application Date: 2014-04-29
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Publication No.: US09346167B2Publication Date: 2016-05-24
- Inventor: Peter O'Connor , Eugene Izhikevich
- Applicant: Brain Corporation
- Applicant Address: US CA San Diego
- Assignee: Brain Corporation
- Current Assignee: Brain Corporation
- Current Assignee Address: US CA San Diego
- Agency: Gazdzinski & Associates, PC
- Main IPC: G05B19/04
- IPC: G05B19/04 ; G05B19/18 ; B25J9/16 ; G06N3/00 ; G06N3/04 ; G06N3/08

Abstract:
A robotic vehicle may be operated by a learning controller comprising a trainable convolutional network configured to determine control signal based on sensory input. An input network layer may be configured to transfer sensory input into a hidden layer data using a filter convolution operation. Input layer may be configured to transfer sensory input into hidden layer data using a filter convolution. Output layer may convert hidden layer data to a predicted output using data segmentation and a fully connected array of efficacies. During training, efficacy of network connections may be adapted using a measure determined based on a target output provided by a trainer and an output predicted by the network. A combination of the predicted and the target output may be provided to the vehicle to execute a task. The network adaptation may be configured using an error back propagation method. The network may comprise an input reconstruction.
Public/Granted literature
- US20150306761A1 TRAINABLE CONVOLUTIONAL NETWORK APPARATUS AND METHODS FOR OPERATING A ROBOTIC VEHICLE Public/Granted day:2015-10-29
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