Mobilenet-ssd-keras
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A Keras port of Single Shot MultiBox Detector as Mobilenet as a Backbone
in order to load the pre trained model with the weights given in your repository , i also need the config file that is the architecture of the model to...
Working fine for 3 batches in first iteration after that the loss was becoming Nan or inf.Can anyone had faced a similar issue or know where the issue is please...
Hi, Sorry to bother you, I am stuck on this : ValueError: A `Concatenate` layer requires inputs with matching shapes except for the concat axis. Got inputs shapes: [(None, 2268,...
Hi, I'm working with your code but i cannot obtain the specified mAP. I obtain 60.1% approximately by using converted_model.h5 weights file. Second the links specified to download the weights...
Hi, I'm experimenting with your repository but the training stops with error, raising this exception: ``` File "/home/davidecremona/PycharmProjects/Mobilenet-ssd-keras/training/drb_train_mobilenet_ssd.py", line 262, in train(args) File "/home/davidecremona/PycharmProjects/Mobilenet-ssd-keras/training/drb_train_mobilenet_ssd.py", line 242, in train callbacks=callbacks File...
The web page of the mobilenet_v1.h5 is 404. Can you provide another link or email me the weight file?My email is [email protected],thanks.
please, what parameters are needed for optimal forecast of the model in BatchGenerator train_dataset.generate(batch_size=batch_size, shuffle=True, train=True, ssd_box_encoder=ssd_box_encoder, convert_to_3_channels=True, equalize=True, brightness=(0.5, 2, 0.5), flip=0.5, translate=False, scale=False, max_crop_and_resize=(img_height, img_width, 1, 3), #...
 when i run the training_mobilenet_ssd.py, the issue occured. how could i resolve it?
when loading my training weights the same tensor is predicted model.load_weights('/home/artem/object detection/virtual/Mobilenet-ssd-keras/MobilenetWeights/mobilenet.h5', by_name=True,skip_mismatch=True) y_pred = model.predict(input_images) print(y_pred) [[[0.25 0.25 0.25 ... 0.1 0.2 0.2 ] [0.25 0.25 0.25 ... 0.1...
in file: infer_mobilenet_ssd.py y_pred_decoded = decode_y(y_pred, confidence_thresh=0.25, iou_threshold=0.45, top_k=100, input_coords='centroids', normalize_coords=True, img_height=img_height, img_width=img_width) print(y_pred_decoded) out: [ [ ] ]