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Update #1 (original question and details below):

As per the suggestion of @MatthijsHollemans below I've tried to run this by removing dynamic_axes from the initial create_onnx step below. This removed both:

Description of image feature 'input_image' has missing or non-positive width 0.

and

Input 'input_image' of layer '63' not found in any of the outputs of the preceeding layers.

Unfortunately this opens up two sub-questions:

  • I still want to have a functional ONNX model. Is there a more appropriate way to make H and W dynamic? Or should I be saving two versions of the ONNX model, one without dynamic_axes for the CoreML conversion, and one with for use as a valid ONNX model?

  • Although this solves the compilation error in xcode (specified below) it introduces the following runtime issues:

Finalizing CVPixelBuffer 0x282f4c5a0 while lock count is 1.
[espresso] [Espresso::handle_ex_plan] exception=Invalid X-dimension 1/480 status=-7
[coreml] Error binding image input buffer input_image: -7
[coreml] Failure in bindInputsAndOutputs.

I am calling this the same way I was calling the fixed size model, which does still work fine. The image dimensions are 640 x 480.

As specified below the model should accept any image between 64x64 and higher.

For flexible shape models, do I need to provide an input differently in xcode?


Original Question (parts still relevant)

I have been slowly working on converting a style transfer model from pytorch > onnx > coreml. One of the issues that has been a struggle is flexible/dynamic input + output shape.

This method (besides i/o renaming) has worked well on iOS 12 & 13 when using a static input shape.

I am using the following code to do the onnx > coreml conversion:

def create_coreml(name):
    mlmodel = convert(
            model="onnx/" + name + ".onnx",
            preprocessing_args={'is_bgr': True},
            deprocessing_args={'is_bgr': True},
            image_input_names=['input_image'],
            image_output_names=['stylized_image'],
            minimum_ios_deployment_target='13'
            )

    spec = mlmodel.get_spec()

    img_size_ranges = flexible_shape_utils.NeuralNetworkImageSizeRange()

    img_size_ranges.add_height_range((64, -1))
    img_size_ranges.add_width_range((64, -1))

    flexible_shape_utils.update_image_size_range(
        spec,
        feature_name='input_image',
        size_range=img_size_ranges)

    flexible_shape_utils.update_image_size_range(
        spec,
        feature_name='stylized_image',
        size_range=img_size_ranges)

    mlmodel = coremltools.models.MLModel(spec)

    mlmodel.save("mlmodel/" + name + ".mlmodel")

Although the conversion 'succeeds' there are a couple of warnings (spaces added for readability):

Translation to CoreML spec completed. Now compiling the CoreML model.
/usr/local/lib/python3.7/site-packages/coremltools/models/model.py:111: 
RuntimeWarning: You will not be able to run predict() on this Core ML model. Underlying exception message was: 
Error compiling model: 
"Error reading protobuf spec. validator error: Description of image feature 'input_image' has missing or non-positive width 0.".
  RuntimeWarning)

Model Compilation done.
/usr/local/lib/python3.7/site-packages/coremltools/models/model.py:111: 
RuntimeWarning: You will not be able to run predict() on this Core ML model. Underlying exception message was: 
Error compiling model: 
"compiler error:  Input 'input_image' of layer '63' not found in any of the outputs of the preceeding layers.
".
  RuntimeWarning)

If I ignore these warnings and try to compile the model for latest targets (13.0) I get the following error in xcode:

coremlc: Error: compiler error:  Input 'input_image' of layer '63' not found in any of the outputs of the preceeding layers.

Here is what the problematic area appears to look like in netron:

enter image description here


My main question is how can I get these two warnings out of the way?

Happy to provide any other details.

Thanks for any advice!


Below is my pytorch > onnx conversion:

def create_onnx(name):
    prior = torch.load("pth/" + name + ".pth")
    model = transformer.TransformerNetwork()
    model.load_state_dict(prior)

    dummy_input = torch.zeros(1, 3, 64, 64) # I wasn't sure what I would set the H W to here?

    torch.onnx.export(model, dummy_input, "onnx/" + name + ".onnx",
                      verbose=True,
                      opset_version=10,
                      input_names=["input_image"], # These are being renamed from garbled originals.
                      output_names=["stylized_image"], # ^
                      dynamic_axes={'input_image':
                                    {2: 'height', 3: 'width'},
                                    'stylized_image':
                                    {2: 'height', 3: 'width'}}
                      )

    onnx.save_model(original_model, "onnx/" + name + ".onnx")
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  • 1
    Does it work if you use a positive number for the upper bound instead of -1? So (64, 128) instead of (64, -1)? Apr 15, 2020 at 16:37
  • 1
    Can you drop the dynamic_axes argument when doing the ONNX conversion? This might just be confusing things. Apr 16, 2020 at 9:08
  • 1
    I think you'll need to make two versions of the ONNX model indeed, where one is specific for Core ML conversion. As for the new error you're getting, does the model work with 640x480 when you remove the flexibility stuff and convert with 640x480 as the input size? Apr 17, 2020 at 9:03
  • 1
    Is not using a flexible input size an option? If you have the budget for it, you could also hire someone (like me) to convert the model to MPS. Apr 18, 2020 at 14:27
  • 1
    Something I would try is find out exactly which layer is causing problems. You can do this by manually removing layers from the mlmodel until the error goes away. It might be possible to replace the offending layer with something else. I recently did a project for a client where a Clip layer gave the wrong results on the GPU (but worked fine on CPU and ANE). By replacing just that one layer with a ReLU, the model also worked on the GPU. Obviously a bug in Core ML, but these kinds of workaround are the only solution for now. Apr 18, 2020 at 16:12

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