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Added Deep Learning Model
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# <h1 align = "center"> Cricket Shots Deep Learning Model</h1>
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## Aim of the project:
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### The project focuses on classification of different cricket shots using various Deep Learning Algorithms.
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## Deep Learning Algorithms used:
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1. ResNet
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2. DenseNet
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3. InceptionNet
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4. EfficientNet
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### Libraries and Frameworks used:
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1. Pandas
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2. Numpy
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3. Matplotlib
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4. Seaborn
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5. Tensorflow
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6. Keras
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7. sklearn
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8. glob
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9. OpenCV
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## Accuracy and training time comparison of all the Deep Learning Algorithms
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| | Accuracy |
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|--------------------|---------------|
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| ResNet | 86% |
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| DenseNet | 92% |
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| InceptionNet | 96% |
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| EfficientNet | 95% |
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# Representation of different cricket shots
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![EDA](https://github.com/the-silent-geek/DL-Simplified/blob/2e8e0b207bd08e758fca8e93d5433c73f277ef1e/Cricket%20Shots%20Detection/images/eda_cric.png)
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# Bar plot of counts of each shot in the dataset
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![values](https://github.com/the-silent-geek/DL-Simplified/blob/2e8e0b207bd08e758fca8e93d5433c73f277ef1e/Cricket%20Shots%20Detection/images/bar.png)
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# Pie chart for the distribution of shots in the dataset
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![ri](https://github.com/the-silent-geek/DL-Simplified/blob/2e8e0b207bd08e758fca8e93d5433c73f277ef1e/Cricket%20Shots%20Detection/images/pie%20chart.png)
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# Accuracy and plots of all models
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## InceptionNetV2
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![inv2](https://github.com/the-silent-geek/DL-Simplified/blob/2e8e0b207bd08e758fca8e93d5433c73f277ef1e/Cricket%20Shots%20Detection/images/inception.png)
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## DenseNet
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![densenet](https://github.com/the-silent-geek/DL-Simplified/blob/2e8e0b207bd08e758fca8e93d5433c73f277ef1e/Cricket%20Shots%20Detection/images/dense.png)
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## ResNet50
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![resnet](https://github.com/the-silent-geek/DL-Simplified/blob/2e8e0b207bd08e758fca8e93d5433c73f277ef1e/Cricket%20Shots%20Detection/images/resnet.png)
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## EfficientNet
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![effnet](https://github.com/the-silent-geek/DL-Simplified/blob/2e8e0b207bd08e758fca8e93d5433c73f277ef1e/Cricket%20Shots%20Detection/images/efficient.png)
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# Conclusion
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InceptionNet model performs better comparative to other models used on the above dataset.
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# Dataset
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The dataset used in this project is take from the Kaggle website.
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<br>
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<b>Dataset Link:- https://www.kaggle.com/datasets/aneesh10/cricket-shot-dataset</b>
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<br>
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<br>
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1. The directory drives consists of the cover drive, straight drive and off drive.
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<br>
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2. The directory legglance-flick contains the images for the leg glance and flick shot.
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<br>
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3. The directory pullshot has the images for pull shot.
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<br>
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4. The directory sweep has the image for sweep shot.
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<br>
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Algorithms and Deep Learning Models/Cricket Shots Deep Learning Model/model/cricket shots.ipynb

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