Commit 2dcb280e authored by Smit Gangurde's avatar Smit Gangurde

Updated readme

parent 2ea1ae54
# Indian Classical Dance Classification from Dance Poses # Indian Classical Dance Classification from Dance Poses
### Authors: ### Authors:
Aarushi Aiyyar : 203050045\ Aarushi Aiyyar : 203050045
Bhavesh Yadav : 193050052\ Bhavesh Yadav : 193050052
Khyati Oswal : 203050058\ Khyati Oswal : 203050058
Raj Gite : 203050092\ Raj Gite : 203050092
Smit Gangurde : 203050108\ Smit Gangurde : 203050108
Yavnika Bhagat : 203050041 Yavnika Bhagat : 203050041
### Problem Statement: ### Problem Statement:
Identify the type of Indian dance form from a dance pose image. Use multiple techniques to classify the images and compare the various techniques.\ Identify the type of Indian dance form from a dance pose image. Use multiple techniques to classify the images and compare the various techniques.
### Dataset: ### Dataset:
https://www.kaggle.com/somnath796/indian-dance-form-recognition\ https://www.kaggle.com/somnath796/indian-dance-form-recognition
Train Images: 364 | Test Images: 156\ Train Images: 364 | Test Images: 156
Number of classes: 8 Number of classes: 8
### Techniques used and their test accuracies: ### Techniques used and their test accuracies:
|Implementation |Test Accuracy | |Implementation |Test Accuracy |
...@@ -23,14 +23,14 @@ Implemented Cross Validation. ...@@ -23,14 +23,14 @@ Implemented Cross Validation.
### Running the code: ### Running the code:
Python Notebooks along with the necessary code are provided in the repository, in the folder 'Notebooks/'. Python Notebooks along with the necessary code are provided in the repository, in the folder 'Notebooks/'.
1. Custom CNN notebook:\ 1. Custom CNN notebook:
Open the notebook, import the 'helpers' directory and run the cells. Open the notebook, import the 'helpers' directory and run the cells.
2. VGG16:\ 2. VGG16:
Open the notebook, and run the cells. Open the notebook, and run the cells.
3. ResNet152 using Monk:\ 3. ResNet152 using Monk:
i. You can directly download the ipynb file and run it on kaggle\ i. You can directly download the ipynb file and run it on kaggle
ii. Upload dataset with appropriate data structure\ ii. Upload dataset with appropriate data structure
iii. Download the uploaded .py file, according to the numbers given in the file, execute commands on Kaggle notebook.\ iii. Download the uploaded .py file, according to the numbers given in the file, execute commands on Kaggle notebook.
### References: ### References:
......
Markdown is supported
0% or
You are about to add 0 people to the discussion. Proceed with caution.
Finish editing this message first!
Please register or to comment