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公开(公告)号:US20240086693A1
公开(公告)日:2024-03-14
申请号:US18371934
申请日:2023-09-22
Applicant: Intel Corporation
Inventor: Yiwen GUO , Yuqing Hou , Anbang YAO , Dongqi Cai , Lin Xu , Ping Hu , Shandong Wang , Wenhua Cheng , Yurong Chen , Libin Wang
IPC: G06N3/063 , G06F18/21 , G06F18/213 , G06F18/214 , G06N3/044 , G06N3/045 , G06N3/08 , G06V10/44 , G06V10/764 , G06V10/82 , G06V10/94 , G06V20/00
CPC classification number: G06N3/063 , G06F18/213 , G06F18/2148 , G06F18/217 , G06N3/044 , G06N3/045 , G06N3/08 , G06V10/454 , G06V10/764 , G06V10/82 , G06V10/94 , G06V10/955 , G06V20/00
Abstract: Methods and systems for budgeted and simplified training of deep neural networks (DNNs) are disclosed. In one example, a trainer is to train a DNN using a plurality of training sub-images derived from a down-sampled training image. A tester is to test the trained DNN using a plurality of testing sub-images derived from a down-sampled testing image. In another example, in a recurrent deep Q-network (RDQN) having a local attention mechanism located between a convolutional neural network (CNN) and a long-short time memory (LSTM), a plurality of feature maps are generated by the CNN from an input image. Hard-attention is applied by the local attention mechanism to the generated plurality of feature maps by selecting a subset of the generated feature maps. Soft attention is applied by the local attention mechanism to the selected subset of generated feature maps by providing weights to the selected subset of generated feature maps in obtaining weighted feature maps. The weighted feature maps are stored in the LSTM. A Q value is calculated for different actions based on the weighted feature maps stored in the LSTM.
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公开(公告)号:US11803739B2
公开(公告)日:2023-10-31
申请号:US17584216
申请日:2022-01-25
Applicant: Intel Corporation
Inventor: Yiwen Guo , Yuqing Hou , Anbang Yao , Dongqi Cai , Lin Xu , Ping Hu , Shandong Wang , Wenhua Cheng , Yurong Chen , Libin Wang
IPC: G06K9/62 , G06N3/063 , G06N3/08 , G06V10/94 , G06F18/21 , G06F18/213 , G06F18/214 , G06N3/044 , G06N3/045 , G06V10/764 , G06V10/82 , G06V10/44 , G06V20/00
CPC classification number: G06N3/063 , G06F18/213 , G06F18/217 , G06F18/2148 , G06N3/044 , G06N3/045 , G06N3/08 , G06V10/454 , G06V10/764 , G06V10/82 , G06V10/94 , G06V10/955 , G06V20/00
Abstract: Methods and systems for budgeted and simplified training of deep neural networks (DNNs) are disclosed. In one example, a trainer is to train a DNN using a plurality of training sub-images derived from a down-sampled training image. A tester is to test the trained DNN using a plurality of testing sub-images derived from a down-sampled testing image. In another example, in a recurrent deep Q-network (RDQN) having a local attention mechanism located between a convolutional neural network (CNN) and a long-short time memory (LSTM), a plurality of feature maps are generated by the CNN from an input image. Hard-attention is applied by the local attention mechanism to the generated plurality of feature maps by selecting a subset of the generated feature maps. Soft attention is applied by the local attention mechanism to the selected subset of generated feature maps by providing weights to the selected subset of generated feature maps in obtaining weighted feature maps. The weighted feature maps are stored in the LSTM. A Q value is calculated for different actions based on the weighted feature maps stored in the LSTM.
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公开(公告)号:US11538164B2
公开(公告)日:2022-12-27
申请号:US17124064
申请日:2020-12-16
Applicant: Intel Corporation
Inventor: Libin Wang , Anbang Yao , Yurong Chen
IPC: G06V10/00 , G06T7/10 , G06N3/04 , G06N3/08 , G06T7/11 , G06T7/143 , G06V10/26 , G06V10/94 , G06V10/44 , G06F16/55 , G06N5/04
Abstract: Techniques related to implementing fully convolutional networks for semantic image segmentation are discussed. Such techniques may include combining feature maps from multiple stages of a multi-stage fully convolutional network to generate a hyper-feature corresponding to an input image, up-sampling the hyper-feature and summing it with a feature map of a previous stage to provide a final set of features, and classifying the final set of features to provide semantic image segmentation of the input image.
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公开(公告)号:US20200005074A1
公开(公告)日:2020-01-02
申请号:US16489084
申请日:2017-03-27
Applicant: INTEL CORPORATION
Inventor: Libin Wang , Anbang Yao , Jianguo Li , Yurong Chen
Abstract: An example apparatus for semantic image segmentation includes a receiver to receive an image to be segmented. The apparatus also includes a gated dense pyramid network comprising a plurality of gated dense pyramid (GDP) blocks to be trained to generate semantic labels for each pixel in the received image. The apparatus further includes a generator to generate a segmented image based on the generated semantic labels.
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公开(公告)号:US20190164290A1
公开(公告)日:2019-05-30
申请号:US16320944
申请日:2016-08-25
Applicant: Intel Corporation
Inventor: Libin Wang , Anbang Yao , Yurong Chen
Abstract: Techniques related to implementing fully convolutional networks for semantic image segmentation are discussed. Such techniques may include combining feature maps from multiple stages of a multi-stage fully convolutional network to generate a hyper-feature corresponding to an input image, up-sampling the hyper-feature and summing it with a feature map of a previous stage to provide a final set of features, and classifying the final set of features to provide semantic image segmentation of the input image.
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