(ImageDataGenerator) is Keras deep learning library provides the ability to use data augmentation automatically when training a model.
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Updated
Oct 22, 2020 - Jupyter Notebook
(ImageDataGenerator) is Keras deep learning library provides the ability to use data augmentation automatically when training a model.
A python module to generate synthetic images from 3D models, for use in image detection/segmentation tasks.
In this dataset we are provided with images that belong to 4 classes : diseased leaf , diseased plant , fresh leaf and fresh plant. The objective of this study is to create a CNN model to help us predict whether these image of the leaf/plant belong to the diseased category or the healthy category.
Webots Image Dataset Collection For Computer Vision And Deep Learning
Image Data Augmentation with Keras and Image data generator with keras model.
A basic introduction to learning CNN through applications of VGG models.
The goal of this project is to build a neural network that takes an MNIST handwritten digit (0-9) image and a random number (digit 0-9) as inputs and returns the predicted class label (0-9) for the input image and its addition (sum) with the input random number as summed output (range 0-18) label as outputs.
CNN model to classify garbage
Transform TV control with Gesture Recognition! Enable intuitive interaction with smart TVs using gestures built using Conv3D, CNN & RNN
An image downloader for https://pikwizard.com using Selenium. Copyright-free image downloader.
The standard approach to image reconstruction using deep learning is to use clean image priors for training purposes. In this project, we attempt to achieve denoising without using a clean image prior and yet, achieving a performance comparable to, or sometimes, even better than that obtained using the conventional approach.
In this X-ray classification assignment, we built a deep learning model to classify chest X-ray images into "nofinding" and "effusion" classes. We tackled challenges like data augmentation, imbalanced classes, and used weighted cross-entropy to improve model performance. The goal was to identify abnormalities with high accuracy.
Train a computer to play Rock-Paper-Scissors by teaching it to recognize hand gestures using images! (Great for machine learning beginners) 😎
A supermarket chain called Good Seed wanted to see if Data Science could help them comply with the law by ensuring that they did not sell age-restricted products to underage customers. My task was to build and evaluate a model to verify a person's age.
Successfully established a deep learning model which can accurately predict whether a woman's face is beautiful or average.
A practice on improving CNN model accuracy by Image Data Generator or transfer learning when train model with a small dataset for binary classification.
manual image labeller (with human level accracy 😉). diy
Successfully established a deep learning model which can precisely classify a human being as a child or an adult.
The binary classification problem focused on first IEEE Image forensics challenge-phase 1, to predict the given image is pristine or manipulated/edited/fake. Comparing CNN & Transfer Learning models for the problem and boosting the performance by feature extraction
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