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Table Of Contents
Installation
Model Zoo
Classification
Detection
Segmentation
Pose Estimation
Action Recognition
Depth Prediction
Apache MXNet Tutorials
Image Classification
1. Getting Started with Pre-trained Model on CIFAR10
2. Dive Deep into Training with CIFAR10
3. Getting Started with Pre-trained Models on ImageNet
4. Transfer Learning with Your Own Image Dataset
5. Train Your Own Model on ImageNet
Object Detection
01. Predict with pre-trained SSD models
02. Predict with pre-trained Faster RCNN models
03. Predict with pre-trained YOLO models
04. Train SSD on Pascal VOC dataset
05. Deep dive into SSD training: 3 tips to boost performance
06. Train Faster-RCNN end-to-end on PASCAL VOC
07. Train YOLOv3 on PASCAL VOC
08. Finetune a pretrained detection model
09. Run an object detection model on your webcam
10. Skip Finetuning by reusing part of pre-trained model
11. Predict with pre-trained CenterNet models
12. Run an object detection model on NVIDIA Jetson module
Instance Segmentation
1. Predict with pre-trained Mask RCNN models
2. Train Mask RCNN end-to-end on MS COCO
Semantic Segmentation
1. Getting Started with FCN Pre-trained Models
2. Test with PSPNet Pre-trained Models
3. Test with DeepLabV3 Pre-trained Models
4. Train FCN on Pascal VOC Dataset
5. Train PSPNet on ADE20K Dataset
6. Reproducing SoTA on Pascal VOC Dataset
7. Test with ICNet Pre-trained Models for Multi-Human Parsing
Pose Estimation
1. Predict with pre-trained Simple Pose Estimation models
2. Predict with pre-trained AlphaPose Estimation models
3. Estimate pose from your webcam
4. Dive deep into Training a Simple Pose Model on COCO Keypoints
Action Recognition
1. Getting Started with Pre-trained TSN Models on UCF101
10. Introducing Decord: an efficient video reader
2. Dive Deep into Training TSN mdoels on UCF101
3. Getting Started with Pre-trained I3D Models on Kinetcis400
4. Dive Deep into Training I3D mdoels on Kinetcis400
5. Getting Started with Pre-trained SlowFast Models on Kinetcis400
6. Dive Deep into Training SlowFast mdoels on Kinetcis400
7. Fine-tuning SOTA video models on your own dataset
8. Extracting video features from pre-trained models
9. Inference on your own videos using pre-trained models
Object Tracking
01. Single object tracking with pre-trained SiamRPN models
02. Train SiamRPN on COCO、VID、DET、Youtube_bb
03. Multiple object tracking with pre-trained SMOT models
Depth Prediction
01. Predict depth from a single image with pre-trained Monodepth2 models
02. Predict depth from an image sequence or a video with pre-trained Monodepth2 models
03. Monodepth2 training on KITTI dataset
04. Testing PoseNet from image sequences with pre-trained Monodepth2 Pose models
Prepare Datasets
Prepare ADE20K dataset.
Prepare COCO datasets
Prepare COCO datasets
Prepare Cityscapes dataset.
Prepare ILSVRC 2015 DET dataset
Prepare ILSVRC 2015 VId dataset
Prepare Multi-Human Parsing V1 dataset
Prepare OTB 2015 dataset
Prepare PASCAL VOC datasets
Prepare Youtube_bb dataset
Prepare custom datasets for object detection
Prepare the 20BN-something-something Dataset V2
Prepare the HMDB51 Dataset
Prepare the ImageNet dataset
Prepare the Kinetics400 dataset
Prepare the UCF101 dataset
Prepare your dataset in ImageRecord format
Auto Module
01. Load web datasets with GluonCV Auto Module
02. Train Image Classification with Auto Estimator
03. Train classifier or detector with HPO using GluonCV Auto task
Distributed Training
1. Distributed training of deep video models
Deployment
1. Export trained GluonCV network to JSON
2. GluonCV C++ Inference Demo
3. Inference with Quantized Models
PyTorch Tutorials
Action Recognition
1. Getting Started with Pre-trained I3D Models on Kinetcis400
2. Fine-tuning SOTA video models on your own dataset
3. Extracting video features from pre-trained models
4. Computing FLOPS, latency and fps of a model
5. DistributedDataParallel (DDP) Framework
API Reference
gluoncv.data
gluoncv.data.batchify
gluoncv.data.transforms
gluoncv.model_zoo
gluoncv.nn
gluoncv.loss
gluoncv.utils
Community
Community
Contribute to GluonCV
Slides
Table Of Contents
Installation
Model Zoo
Classification
Detection
Segmentation
Pose Estimation
Action Recognition
Depth Prediction
Apache MXNet Tutorials
Image Classification
1. Getting Started with Pre-trained Model on CIFAR10
2. Dive Deep into Training with CIFAR10
3. Getting Started with Pre-trained Models on ImageNet
4. Transfer Learning with Your Own Image Dataset
5. Train Your Own Model on ImageNet
Object Detection
01. Predict with pre-trained SSD models
02. Predict with pre-trained Faster RCNN models
03. Predict with pre-trained YOLO models
04. Train SSD on Pascal VOC dataset
05. Deep dive into SSD training: 3 tips to boost performance
06. Train Faster-RCNN end-to-end on PASCAL VOC
07. Train YOLOv3 on PASCAL VOC
08. Finetune a pretrained detection model
09. Run an object detection model on your webcam
10. Skip Finetuning by reusing part of pre-trained model
11. Predict with pre-trained CenterNet models
12. Run an object detection model on NVIDIA Jetson module
Instance Segmentation
1. Predict with pre-trained Mask RCNN models
2. Train Mask RCNN end-to-end on MS COCO
Semantic Segmentation
1. Getting Started with FCN Pre-trained Models
2. Test with PSPNet Pre-trained Models
3. Test with DeepLabV3 Pre-trained Models
4. Train FCN on Pascal VOC Dataset
5. Train PSPNet on ADE20K Dataset
6. Reproducing SoTA on Pascal VOC Dataset
7. Test with ICNet Pre-trained Models for Multi-Human Parsing
Pose Estimation
1. Predict with pre-trained Simple Pose Estimation models
2. Predict with pre-trained AlphaPose Estimation models
3. Estimate pose from your webcam
4. Dive deep into Training a Simple Pose Model on COCO Keypoints
Action Recognition
1. Getting Started with Pre-trained TSN Models on UCF101
10. Introducing Decord: an efficient video reader
2. Dive Deep into Training TSN mdoels on UCF101
3. Getting Started with Pre-trained I3D Models on Kinetcis400
4. Dive Deep into Training I3D mdoels on Kinetcis400
5. Getting Started with Pre-trained SlowFast Models on Kinetcis400
6. Dive Deep into Training SlowFast mdoels on Kinetcis400
7. Fine-tuning SOTA video models on your own dataset
8. Extracting video features from pre-trained models
9. Inference on your own videos using pre-trained models
Object Tracking
01. Single object tracking with pre-trained SiamRPN models
02. Train SiamRPN on COCO、VID、DET、Youtube_bb
03. Multiple object tracking with pre-trained SMOT models
Depth Prediction
01. Predict depth from a single image with pre-trained Monodepth2 models
02. Predict depth from an image sequence or a video with pre-trained Monodepth2 models
03. Monodepth2 training on KITTI dataset
04. Testing PoseNet from image sequences with pre-trained Monodepth2 Pose models
Prepare Datasets
Prepare ADE20K dataset.
Prepare COCO datasets
Prepare COCO datasets
Prepare Cityscapes dataset.
Prepare ILSVRC 2015 DET dataset
Prepare ILSVRC 2015 VId dataset
Prepare Multi-Human Parsing V1 dataset
Prepare OTB 2015 dataset
Prepare PASCAL VOC datasets
Prepare Youtube_bb dataset
Prepare custom datasets for object detection
Prepare the 20BN-something-something Dataset V2
Prepare the HMDB51 Dataset
Prepare the ImageNet dataset
Prepare the Kinetics400 dataset
Prepare the UCF101 dataset
Prepare your dataset in ImageRecord format
Auto Module
01. Load web datasets with GluonCV Auto Module
02. Train Image Classification with Auto Estimator
03. Train classifier or detector with HPO using GluonCV Auto task
Distributed Training
1. Distributed training of deep video models
Deployment
1. Export trained GluonCV network to JSON
2. GluonCV C++ Inference Demo
3. Inference with Quantized Models
PyTorch Tutorials
Action Recognition
1. Getting Started with Pre-trained I3D Models on Kinetcis400
2. Fine-tuning SOTA video models on your own dataset
3. Extracting video features from pre-trained models
4. Computing FLOPS, latency and fps of a model
5. DistributedDataParallel (DDP) Framework
API Reference
gluoncv.data
gluoncv.data.batchify
gluoncv.data.transforms
gluoncv.model_zoo
gluoncv.nn
gluoncv.loss
gluoncv.utils
Community
Community
Contribute to GluonCV
Slides
API Reference
¶
gluoncv.data
gluoncv.data.batchify
gluoncv.data.transforms
gluoncv.model_zoo
gluoncv.nn
gluoncv.loss
gluoncv.utils
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