中科院计算所Recent advances in deep learningWord文档下载推荐.docx
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中科院计算所Recent advances in deep learningWord文档下载推荐.docx
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“DeepResidualLearningforImageRecognition”,He,Zhang,Ren,Sun.CVPR2016.arXiv:
1512.03385.Dec.2015
“HighwayNetworks”,Srivastava,Greff,Schmidhuber,arXiv:
1505.00387.May2015“TrainingVeryDeepNetworks”,Srivastava,Greff,Schmidhuber.NIPS2015
Deepresiduallearning
ProbablythemostsignificantDeepLearningworkin2015.
“DeepResidualLearningforImageRecognition”.He,Zhang,Ren,Sun,CVPR2016.arXiv:
Detection
~0.3sperimage
“FastR-CNN”,Girshick.ICCV2015
“FasterR-CNN:
TowardsReal-TimeObjectDetectionwithRegionProposalNetworks”,Ren,He,Girshick,Sun.NIPS2015
“YouOnlyLookOnce:
Unified,Real-TimeObjectDetection”,Redmon,
Divvala,Girshick,Farhadi.CVPR2016
imagefromGirshick2015.
Segmentation
“FullyConvolutionalNetworksforSemanticSegmentation”,Long,Shelhamer,Darrell.CVPR2015.(CVPRbestpaperhonorablemention)
“EfficientPiecewiseTrainingofDeepStructuredModelsforSemanticSegmentation”,Lin,Shen,vandanHengel,Reid.CVPR2016.
“ConditionalRandomFieldsasRecurrentNeuralNetworks”,Zhengetal.ICCV2015.
“High-performanceSemanticSegmentationUsingVeryDeepFullyConvolutionalNetworks”,Wu,Shen,vandenHengel.arXiv:
1604.04339.April2016.imagefromLongetal.2015
Vision&
Language
(c)Baidu
Imagecaptioning
Visualquestionanswering
“AskMeAnything:
Free-formVisualQuestionAnsweringBasedonKnowledgefromExternalSources”,Wuetal.arXiv:
1506.01144,CVPR2016
“WhatValueHighLevelConceptsinVisiontoLanguageProblems?
”,Wuetal.CVPR2016“VQA:
VisualQuestionAnswering”,Antoletal.ICCV2015.
“AskYourNeurons:
ANeural-BasedApproachtoAnsweringQuestionsAboutImages”,Malinowskietal.ICCV2015.
andmanyotherpapers…
Methodology
(WhatIbelieveisimportant)
RNN
http:
//karpathy.github.io/2015/05/21/rnn-effectiveness/
SceneLabelingWithLSTMRecurrentNeuralNetworks,Byeonetal.CVPR2015.
Deepstructuredlearning
LearningDeepStructuredModels,ICML2015
EfficientPiecewiseTrainingofDeepStructuredModelsforSemanticSegmentation,CVPR2016
ConditionalRandomFieldsasRecurrentNeuralNetworks,Zhengetal.ICCV2015
DeeplyLearningtheMessagesinMessagePassingInference,Linetal.NIPS2015
StructuredlearningasRNN
“CNN-RNN:
AUnifiedFrameworkforMulti-labelImageClassification”,Wangetal.CVPR2016.(Baidu)
“SemanticObjectParsingwithGraphLSTM”,Liang,Shen,Feng,Lin,Yan.arXiv:
1603.07063
Speedinguptesting/training
Low-rankApproximation:
“AcceleratingVeryDeepConvolutionalNetworksforClassificationandDetection”,Zhangetal.,TPAMI2015(MSRA)
Pruning:
“LearningbothWeightsandConnectionsforEfficientNeuralNetworks”,Hanetal.,NIPS2015(NVIDIA)
BinarizedNeuralNetworks:
“BinaryConnect:
TrainingDeepNeuralNetworkswithbinaryweightsduringpropagations”,Courbariauxetal.,NIPS2015
“BinarizedNeuralNetworks:
TrainingDeepNeuralNetworkswithWeightsand
ActivationsConstrainedto+1or-1”,Courbariauxetal.arXiv:
1602.02830
Thanks.Questions?
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