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Update app.py
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app.py
CHANGED
@@ -281,10 +281,7 @@ def predict(image):
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annotated_img = output[0]
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print("annotated_img shape before reshape:", annotated_img.shape)
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annotated_img = annotated_img.reshape(original_image_shape)
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print("annotated_img shape after reshape:", annotated_img.shape)
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# annotated_img = (output[0] / 255.0 - mean)/std
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# annotated_img = classes[output[0][0].argmax(0)]
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@@ -305,7 +302,12 @@ def predict(image):
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print("Min value of image after normalization:", np.min(annotated_img))
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print("Max value of image after normalization:", np.max(annotated_img))
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print("annotated_img type after normalization:", type(annotated_img))
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print("annotated_img shape after normalization:", annotated_img.shape)
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# Convert to PIL Image
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annotated_img = Image.fromarray(annotated_img)
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annotated_img = output[0]
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# annotated_img = (output[0] / 255.0 - mean)/std
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# annotated_img = classes[output[0][0].argmax(0)]
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print("Min value of image after normalization:", np.min(annotated_img))
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print("Max value of image after normalization:", np.max(annotated_img))
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print("annotated_img type after normalization:", type(annotated_img))
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# print("annotated_img shape after normalization:", annotated_img.shape)
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# Reshape the image to match the PIL Image input shape
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print("annotated_img shape before reshape:", annotated_img.shape)
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annotated_img = annotated_img.reshape(original_image_shape)
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print("annotated_img shape after reshape:", annotated_img.shape)
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# Convert to PIL Image
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annotated_img = Image.fromarray(annotated_img)
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