[MYAI Studio SDK] Image-Human-Pose-PyTorch-Jupyter

Applied to human body posture detection, it can detect the position of people's eyes, nose, ears, neck, shoulders, elbows, wrists, hip joints, knee joints, and ankles.

[Instruction]

The solution process is:

Prepare dataset -> Generate files needed for training -> Training -> Use various methods to infer

The dataset used is the dataset of coco2017.

1. 1_prepare_train_labels.ipynb

After execution, the pkl file required for training will be generated.

parameter:

--labels: dataset object keypoints format json label file.

--output-name: output the pkl file for training.

supplement:

If you want to use your own dataset, please note that the label file must be a json file in object keypoints format. The name of the label  file in the object keypoints format in the train/annotations folder must be "person_keypoints_train.json", and the name of the label  file in the object keypoints format in the val/annotations folder must be "val.json".

2. 2_train.ipynb

Training the coco2017 dataset.

parameter:

--train-images-folder: the folder location of training images.

--prepared-train-labels: the pkl label file for training, which is generated after running 1_prepare_train_labels.ipynb.

--val-labels: the object keypoints format json label file of the test image

--val-images-folder: the folder location of test images.

--checkpoint-path: pretrained model file location

3. 3_inference.ipynb

Infer an image and mark the position of the human body and the position of the joints.

parameter:

--images-folder: infer the location of the images.

--checkpoint-path: training model location.

human pose.png

4. 4_inference_folder.ipynb

Infer all the images in the folder, mark the position of the human body and the position of the joints.

parameter:

--images-folder: infer the location of the image folder.

--checkpoint-path: training model location.

5. 5_inference_webcam.ipynb

Infer the webcam image and mark the position of the human body and the position of the joints.

parameter:

--checkpoint-path: training model location.

--video: the specified webcam device.

This SDK is built in AppForAI - AI Dev Tools.

Purchase license separately: USD 600, permanent authorization, single APP authorization, single machine authorization, one-year activation, one-year download, one-year update, one-year email technical support.

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