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Update alexnet preprocessing
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@@ -4,15 +4,30 @@
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#include <vector>
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std::vector<float>
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readAndNormalizeImage(const std::string &imagePath, int width, int height) {
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readAndNormalizeImage(const std::string &imagePath, int resizeSize, int cropSize) {
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// Read the image using OpenCV
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cv::Mat image = cv::imread(imagePath, cv::IMREAD_COLOR);
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// Convert the image from BGR to RGB
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cv::cvtColor(image, image, cv::COLOR_BGR2RGB);
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// Resize and normalize the image
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cv::resize(image, image, cv::Size(width, height));
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// Calculate the scaling factor
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double scale = std::max(static_cast<double>(resizeSize) / image.cols, static_cast<double>(resizeSize) / image.rows);
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// Resize the image
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cv::Mat resized;
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cv::resize(image, resized, cv::Size(), scale, scale, cv::INTER_AREA);
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// Calculate the cropping coordinates
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int x = (resized.cols - cropSize) / 2;
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int y = (resized.rows - cropSize) / 2;
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// Perform center cropping
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cv::Rect roi(x, y, cropSize, cropSize);
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image = resized(roi);
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// Normalize the image
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image.convertTo(image, CV_32FC3, 1.0 / 255.0);
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// Normalize the image https://pytorch.org/hub/pytorch_vision_alexnet/
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cv::Mat mean(image.size(), CV_32FC3, cv::Scalar(0.485, 0.456, 0.406));
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cv::Mat std(image.size(), CV_32FC3, cv::Scalar(0.229, 0.224, 0.225));
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cv::subtract(image, mean, image);
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@@ -124,7 +139,7 @@ int main(int argc, const char *const argv[]) {
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// Read and normalize the image
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std::vector<float> imageData =
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readAndNormalizeImage(imagePath, inputSize.first, inputSize.second);
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readAndNormalizeImage(imagePath, inputSize.first, inputSize.first);
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// Print the size of the image data
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const float *output = model->predict(imageData.data());
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@@ -3,11 +3,17 @@ import sys
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import torchvision
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sys.path.append('../../tools') # Ugly hack
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from utils import export_model_weights, print_model_parameters
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from utils import export_model_weights, print_model_parameters, predict
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if __name__ == "__main__":
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alexnet = torchvision.models.alexnet(weights=torchvision.models.AlexNet_Weights.DEFAULT)
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print_model_parameters(alexnet) # print layer names and number of parameters
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export_model_weights(alexnet, 'alexnet_weights.bin')
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# predict(alexnet, 'cat.jpg')
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weights = torchvision.models.AlexNet_Weights.DEFAULT
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alexnet = torchvision.models.alexnet(weights=weights)
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# print_model_parameters(alexnet) # print layer names and number of parameters
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export_model_weights(alexnet, 'alexnet_weights.bin')
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# class_labels = weights.meta["categories"]
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# prediction = predict(alexnet, "margot.jpg")
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# print(prediction, class_labels[prediction])
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