Invention Grant
- Patent Title: Highly efficient convolutional neural networks
-
Application No.: US17382503Application Date: 2021-07-22
-
Publication No.: US11823024B2Publication Date: 2023-11-21
- Inventor: Andrew Gerald Howard , Mark Sandler , Liang-Chieh Chen , Andrey Zhmoginov , Menglong Zhu
- Applicant: Google LLC
- Applicant Address: US CA Mountain View
- Assignee: GOOGLE LLC
- Current Assignee: GOOGLE LLC
- Current Assignee Address: US CA Mountain View
- Agency: Dority & Manning, P.A.
- Main IPC: G06N3/04
- IPC: G06N3/04 ; G06N3/08 ; G06N3/045 ; G06N3/048

Abstract:
The present disclosure provides directed to new, more efficient neural network architectures. As one example, in some implementations, the neural network architectures of the present disclosure can include a linear bottleneck layer positioned structurally prior to and/or after one or more convolutional layers, such as, for example, one or more depthwise separable convolutional layers. As another example, in some implementations, the neural network architectures of the present disclosure can include one or more inverted residual blocks where the input and output of the inverted residual block are thin bottleneck layers, while an intermediate layer is an expanded representation. For example, the expanded representation can include one or more convolutional layers, such as, for example, one or more depthwise separable convolutional layers. A residual shortcut connection can exist between the thin bottleneck layers that play a role of an input and output of the inverted residual block.
Public/Granted literature
- US20210350206A1 Highly Efficient Convolutional Neural Networks Public/Granted day:2021-11-11
Information query