I am looking for a project written in python with a short report. It is based on Image classification with Neural Networks: Use Tensorflow 2 to train neural networks for the classification of fruit/vegetable types based on images from this dataset "Fruits 360" given on kaggle. Images must be transformed from JPG to RGB pixel values and scaled down (e.g., 32x32). Use fruit/vegetable types (as opposed to variety) as labels to predict and consider only the 10 most frequent types (apple, banana, plum, pepper, cherry, grape, tomato, potato, pear, peach). Experiment with different network architectures and training parameters documenting their influence of the final predictive performance. While the training loss can be chosen freely, the reported test errors must be measured according to the zero-one loss for multiclass classification.
17 freelancers estão ofertando em média €32 nesse trabalho
Hi, I am doing my PhD in computer vision and deep learning. I can write a short report and implement NN for image classification for you using TF 2. Best, Mehdi