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Deep Learning Project: Sign Language Image Classification using CNNs

In this project, I utilized Convolutional Neural Networks (CNNs) to classify images of English Sign Language to their corresponding letters. I was inspired to take on this project when I stumbled upon a rich dataset on Kaggle and thought it would be both fun and challenging to work with.

Data Preprocessing

To start, I preprocessed the dataset to ensure uniformity in the size and shape of the images.

Model Architecture

Next, I split the dataset into training, validation, and test sets. For the model architecture, I experimented with different layers, filters, and kernel sizes to find the optimal combination that would yield the highest accuracy.

Model Training and Evaluation

After training the CNN model on the training set, I evaluated its performance on the validation set and fine-tuned the hyperparameters to improve accuracy. Finally, I tested the model on the test set and obtained a high accuracy score.

This deep learning project provided me with a great opportunity to learn and experiment with CNNs for image classification. Through this project, I developed a better understanding of how to preprocess image data, optimize model architecture, and fine-tune hyperparameters for optimal performance.