- 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
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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.
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Gagan Agarwal
am 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!
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