[YOLOv2] Train the feature layer instead of transfer learning
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As explained in the example in https://de.mathworks.com/help/vision/ug/train-an-object-detector-using-you-only-look-once.html, most YOLO network in Matlab context is trained via transfer learning. The feature layer is pretrained, and using trainYOLOv2ObjectDetector I can only adapt the coefficients in detector layers. When I change the
[detector, info] = trainYOLOv2ObjectDetector(augmentedTrainingData,lgraph, opts);
with detector = trainNetwork(dsTrain,lgraph,opts);
I have the following error (info. I have increased the labels to 4 classes)
Error using trainNetwork
Invalid training data. The output size ([23 40 63]) of the last layer does not match the response size ([1 1 4]).
How can I realize training of the complete YOLOv2 network, not just part of it?
Thank you.
3 comentarios
Venu
el 5 de Dic. de 2023
Firstly I'll answer your queries.
"I have to manually add these information into the "dsTrain", correct? "YES.
"Actually, my intention is to train the complete YOLOv2 network instead of the layers only reponsible for detector. Is it possible to use "trainYOLOv2ObjectDetector" to realize my intention? "Unfortunately NO.The "trainYOLOv2ObjectDetector" function is designed for transfer learning and is not intended for training the entire network from scratch. It assumes that the backbone network (in your case, Darknet19 up to "leaky_relu_13") is pre-trained and its weights are frozen during training. This means that only the layers added beyond the backbone (i.e., the detection layers) are trained to adapt to your specific object detection task. If you want to train the complete YOLOv2 network, you need to either train from scratch or fine-tune the entire network, including the feature extraction layers (Darknet19). So you cannot use "trainYOLOv2ObjectDetector" and must proceed with "trainNetwork".
Coming to the data and info that you have provided I would suggest these steps:
1. Apply the same augmentations to both the images and the bounding boxes and add to "trainNetwork" manually. Some entries are empty [ ], which suggests that no object was detected or annotated in that particular image. You'll need to decide how to handle these cases during training - whether to include them as negative examples or to exclude them from the training process.
2. Preprocess the bounding box data into the format expected by YOLO. This involves assigning each bounding box to the appropriate cell in the 45x45 grid based on its coordinates, encoding the bounding box coordinates relative to the cell it's assigned to, encoding the objectness score and class probabilities.
Hope this helps!
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