From 38101eb13640d9a1e33adce8d99aeee706a3019b Mon Sep 17 00:00:00 2001 From: anetla Date: Tue, 19 Dec 2023 15:05:14 +0100 Subject: [PATCH] test --- tomato_model/working_tomato.ipynb | 126 +++++++++++++++++++++++++++++- 1 file changed, 124 insertions(+), 2 deletions(-) diff --git a/tomato_model/working_tomato.ipynb b/tomato_model/working_tomato.ipynb index 0ff48eb..5d213ab 100644 --- a/tomato_model/working_tomato.ipynb +++ b/tomato_model/working_tomato.ipynb @@ -1614,7 +1614,7 @@ }, { "cell_type": "code", - "execution_count": 3, + "execution_count": 2, "metadata": {}, "outputs": [], "source": [ @@ -1624,13 +1624,135 @@ }, { "cell_type": "code", - "execution_count": 4, + "execution_count": 3, "metadata": {}, "outputs": [], "source": [ "model_onnx = onnx.load(r\"runs\\detect\\train\\weights\\best.onnx\")" ] }, + { + "cell_type": "code", + "execution_count": 5, + "metadata": {}, + "outputs": [], + "source": [ + "onnx_model_path = \"runs/detect/train/weights/best.onnx\"" + ] + }, + { + "cell_type": "code", + "execution_count": 4, + "metadata": {}, + "outputs": [], + "source": [ + "import onnxruntime" + ] + }, + { + "cell_type": "code", + "execution_count": 6, + "metadata": {}, + "outputs": [], + "source": [ + "sess = onnxruntime.InferenceSession(onnx_model_path)" + ] + }, + { + "cell_type": "code", + "execution_count": 9, + "metadata": {}, + "outputs": [], + "source": [ + "img_path = \"val/images/IMG_20191215_112519.jpg\"\n", + "img = Image.open(img_path)\n", + "\n", + "# Resize the image to match the model input dimensions (640x640)\n", + "img = img.resize((640, 640))\n", + "\n", + "# Convert the image to a NumPy array and normalize if necessary\n", + "img_array = np.array(img).astype(np.float32) / 255.0\n", + "\n", + "# Add a batch dimension to match the model input shape\n", + "input_data = np.expand_dims(img_array, axis=0)\n", + "\n", + "# Transpose the array to match the expected shape [1, 3, 640, 640]\n", + "input_data = np.transpose(input_data, (0, 3, 1, 2))\n", + "\n", + "# Run inference\n", + "output = sess.run(None, {'images': input_data})\n", + "\n" + ] + }, + { + "cell_type": "code", + "execution_count": 12, + "metadata": {}, + "outputs": [], + "source": [ + "import matplotlib.pyplot as plt\n", + "import matplotlib.patches as patches" + ] + }, + { + "cell_type": "code", + "execution_count": 24, + "metadata": {}, + "outputs": [ + { + "data": { + "image/png": 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", + "text/plain": [ + "
" + ] + }, + "metadata": {}, + "output_type": "display_data" + } + ], + "source": [ + "output_array = output[0]\n", + "\n", + "# Extract the image from the array (assuming it represents an image)\n", + "image = np.squeeze(output_array)\n", + "\n", + "# Display the image using matplotlib\n", + "plt.imshow(image, cmap='viridis') # You can choose a different colormap if needed\n", + "plt.colorbar()\n", + "plt.show()\n" + ] + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [] + }, + { + "cell_type": "code", + "execution_count": 10, + "metadata": {}, + "outputs": [ + { + "data": { + "text/plain": [ + "[array([[[ 9.1795, 10.609, 15.407, ..., 571.7, 608.08, 637.42],\n", + " [ 14.536, 19.348, 13.814, ..., 640.77, 639.34, 633.99],\n", + " [ 18.398, 21.376, 31.429, ..., 387.02, 368.76, 333.3],\n", + " ...,\n", + " [ 1.3977e-05, 1.2845e-05, 8.1062e-06, ..., 1.7881e-07, 1.4901e-07, 1.7881e-07],\n", + " [ 5.9545e-05, 4.3005e-05, 1.4186e-05, ..., 4.1723e-07, 3.2783e-07, 2.9802e-07],\n", + " [ 0.00046247, 0.00027332, 6.2734e-05, ..., 5.3644e-07, 4.4703e-07, 4.7684e-07]]], dtype=float32)]" + ] + }, + "execution_count": 10, + "metadata": {}, + "output_type": "execute_result" + } + ], + "source": [ + "output" + ] + }, { "cell_type": "code", "execution_count": 2,