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TensorFlow Research Models

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TensorFlow Research Models

This directory contains code implementations and pre-trained models of published research papers.

The research models are maintained by their respective authors.

Table of Contents

Modeling Libraries and Models

DirectoryNameDescriptionMaintainer(s)
object_detectionTensorFlow Object Detection APIA framework that makes it easy to construct, train and deploy object detection models

A collection of object detection models pre-trained on the COCO dataset, the Kitti dataset, the Open Images dataset, the AVA v2.1 dataset, and the iNaturalist Species Detection Dataset| jch1, tombstone, pkulzc | | slim | TensorFlow-Slim Image Classification Model Library | A lightweight high-level API of TensorFlow for defining, training and evaluating image classification models • Inception V1/V2/V3/V4 • Inception-ResNet-v2 • ResNet V1/V2 • VGG 16/19 • MobileNet V1/V2/V3 • NASNet-A_Mobile/Large • PNASNet-5_Large/Mobile | sguada, marksandler2 |

Models and Implementations

Computer Vision

DirectoryPaper(s)ConferenceMaintainer(s)
attention_ocrAttention-based Extraction of Structured Information from Street View ImageryICDAR 2017xavigibert
autoaugment[1] AutoAugment
[2] Wide Residual Networks
[3] Shake-Shake regularization
[4] ShakeDrop Regularization for Deep Residual Learning[1] CVPR 2019
[2] BMVC 2016
[3] ICLR 2017
[4] ICLR 2018barretzoph
deeplab[1] DeepLabv1: Semantic Image Segmentation with Deep Convolutional Nets and Fully Connected CRFs
[2] DeepLabv2: Semantic Image Segmentation with Deep Convolutional Nets, Atrous Convolution, and Fully Connected CRFs
[3] DeepLabv3: Rethinking Atrous Convolution for Semantic Image Segmentation
[4] DeepLabv3+: Encoder-Decoder with Atrous Separable Convolution for Semantic Image Segmentation
[1] ICLR 2015
[2] TPAMI 2017
[4] ECCV 2018aquariusjay, yknzhu
delf[1] DELF (DEep Local Features): Large-Scale Image Retrieval with Attentive Deep Local Features
[2] Detect-to-Retrieve: Efficient Regional Aggregation for Image Search
[3] DELG (DEep Local and Global features): Unifying Deep Local and Global Features for Image Search
[4] GLDv2: Google Landmarks Dataset v2 -- A Large-Scale Benchmark for Instance-Level Recognition and Retrieval[1] ICCV 2017
[2] CVPR 2019
[4] CVPR 2020andrefaraujo
lstm_object_detectionMobile Video Object Detection with Temporally-Aware Feature MapsCVPR 2018yinxiaoli, yongzhe2160, lzyuan
marcoMARCO: Classification of crystallization outcomes using deep convolutional neural networksvincentvanhoucke
vid2depthUnsupervised Learning of Depth and Ego-Motion from Monocular Video Using 3D Geometric ConstraintsCVPR 2018rezama

Natural Language Processing

DirectoryPaper(s)ConferenceMaintainer(s)
adversarial_text[1] Adversarial Training Methods for Semi-Supervised Text Classification
[2] Semi-supervised Sequence Learning[1] ICLR 2017
[2] NIPS 2015rsepassi, a-dai
cvt_textSemi-Supervised Sequence Modeling with Cross-View TrainingEMNLP 2018clarkkev, lmthang

Audio and Speech

DirectoryPaper(s)ConferenceMaintainer(s)
audioset[1] Audio Set: An ontology and human-labeled dataset for audio events
[2] CNN Architectures for Large-Scale Audio ClassificationICASSP 2017plakal, dpwe
deep_speechDeep Speech 2ICLR 2016yhliang2018

Reinforcement Learning

DirectoryPaper(s)ConferenceMaintainer(s)
efficient-hrl[1] Data-Efficient Hierarchical Reinforcement Learning
[2] Near-Optimal Representation Learning for Hierarchical Reinforcement Learning[1] NIPS 2018
[2] ICLR 2019ofirnachum
pcl_rl[1] Improving Policy Gradient by Exploring Under-appreciated Rewards
[2] Bridging the Gap Between Value and Policy Based Reinforcement Learning
[3] Trust-PCL: An Off-Policy Trust Region Method for Continuous Control[1] ICLR 2017
[2] NIPS 2017
[3] ICLR 2018ofirnachum

Others

DirectoryPaper(s)ConferenceMaintainer(s)
lfadsLFADS - Latent Factor Analysis via Dynamical Systemsjazcollins, sussillo
rebarREBAR: Low-variance, unbiased gradient estimates for discrete latent variable modelsNIPS 2017gjtucker

Old Models and Implementations in TensorFlow 1

:warning: If you are looking for old models, please visit the Archive branch.


Contributions

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