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The model image_segmentation_efficientsam introduced in #258 does not comply with the ONNX standard.
image_segmentation_efficientsam
To verify this, you can use the following snippet:
import onnx model = onnx.load("image_segmentation_efficientsam_ti_2024may.onnx") onnx.checker.check_model(model, full_check=True)
The ONNX checker raises the following exception:
onnx.onnx_cpp2py_export.shape_inference.InferenceError: [ShapeInferenceError] Inference error(s): (op_type:Tile, node name: /mask_decoder/Tile): [ShapeInferenceError] Inferred shape and existing shape differ in rank: (5) vs (0) (op_type:Reshape, node name: /mask_decoder/transformer/Reshape): [ShapeInferenceError] Dimension could not be inferred: incompatible shapes
The text was updated successfully, but these errors were encountered:
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The model
image_segmentation_efficientsam
introduced in #258 does not comply with the ONNX standard.To verify this, you can use the following snippet:
The ONNX checker raises the following exception:
onnx.onnx_cpp2py_export.shape_inference.InferenceError: [ShapeInferenceError] Inference error(s): (op_type:Tile, node name: /mask_decoder/Tile): [ShapeInferenceError] Inferred shape and existing shape differ in rank: (5) vs (0) (op_type:Reshape, node name: /mask_decoder/transformer/Reshape): [ShapeInferenceError] Dimension could not be inferred: incompatible shapes
The text was updated successfully, but these errors were encountered: