- Loading and Preprocessing the Data: Begin by loading your dataset and conducting necessary preprocessing. Ensure that each data point is labeled with a result field indicating one of the two desired classes.
- Splitting the Data into Training and Testing Sets: Divide your dataset into two parts: one for training the model (training set) and the other for evaluating the model's performance (testing set).
- Preparing AlexNet for Binary Classification: Load AlexNet and adjust it as needed to make it suitable for binary classification tasks.
- Specifying Training Options and Training the Network: Choose appropriate training options for your model. Proceed to train the network using the training set prepared in the previous steps.
- Evaluating the Network: After training, evaluate the performance of your network using the testing set. For calculating 'accuracy', you may refer to below documentation.
Classify images with alexnet into 2 classes and calculate performance
1 view (last 30 days)
Show older comments
Hi everyone ,I want to use alexnet to classify my image dataset into 2 classes and evaluate the performances (Accuracy, Sensitivity, Sensibiliity...) using the confusion matrix after the classification.I am beginner in matlab can anyone post a guide or code wich i can follow it. and Thanks.
0 Comments
Answers (1)
Gagan Agarwal
on 14 Jun 2024
Hi His
You can refer to the following steps to classify the image dataset into 2 classes and evaluating the model's performance
I hope it helps!
0 Comments
See Also
Categories
Find more on Image Data Workflows in Help Center and File Exchange
Community Treasure Hunt
Find the treasures in MATLAB Central and discover how the community can help you!
Start Hunting!