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This is my first time analysing bioimages and I am trying out different models but started with STARdist. This is IF image and I want to perform nuclei segmentation on DAPI file. I was able to follow the tutorial and basically trying to run the notebook on my image with default settings and i get this error. Could you please help? Thank you!
/usr/local/lib/python3.10/dist-packages/stardist/models/base.py in predict_instances(self, *args, **kwargs)
775 # return last "yield"ed value of generator
776 r = None
--> 777 for r in self._predict_instances_generator(*args, **kwargs):
778 pass
779 return r
/usr/local/lib/python3.10/dist-packages/stardist/models/base.py in _predict_instances_generator(self, img, axes, normalizer, sparse, prob_thresh, nms_thresh, scale, n_tiles, show_tile_progress, verbose, return_labels, predict_kwargs, nms_kwargs, overlap_label, return_predict)
727 res = None
728 if sparse:
--> 729 for res in self._predict_sparse_generator(img, axes=axes, normalizer=normalizer, n_tiles=n_tiles,
730 prob_thresh=prob_thresh, show_tile_progress=show_tile_progress, **predict_kwargs):
731 if res is None:
Hi @bnsreenu,
This is my first time analysing bioimages and I am trying out different models but started with STARdist. This is IF image and I want to perform nuclei segmentation on DAPI file. I was able to follow the tutorial and basically trying to run the notebook on my image with default settings and i get this error. Could you please help? Thank you!
labels, polys = model.predict_instances_big(image, axes='YXC', block_size=4096, min_overlap=128, context=128, normalizer=normalizer, n_tiles=(4,4,1))
`effective: block_size=(4096, 4096, 3), min_overlap=(128, 128, 0), context=(128, 128, 0)
0%| | 0/10 [00:00<?, ?it/s]
ValueError Traceback (most recent call last)
in <cell line: 2>()
1 #Slow - takes time to segment the large image
----> 2 labels, polys = model.predict_instances_big(image, axes='YXC', block_size=4096, min_overlap=128, context=128,
3 normalizer=normalizer, n_tiles=(4,4,1))
5 frames
/usr/local/lib/python3.10/dist-packages/stardist/models/base.py in predict_instances_big(self, img, axes, block_size, min_overlap, context, labels_out, labels_out_dtype, show_progress, **kwargs)
941 # actual computation
942 for block in blocks:
--> 943 labels, polys = self.predict_instances(block.read(img, axes=axes), **kwargs)
944 labels = block.crop_context(labels, axes=axes_out)
945 labels, polys = block.filter_objects(labels, polys, axes=axes_out)
/usr/local/lib/python3.10/dist-packages/stardist/models/base.py in predict_instances(self, *args, **kwargs)
775 # return last "yield"ed value of generator
776 r = None
--> 777 for r in self._predict_instances_generator(*args, **kwargs):
778 pass
779 return r
/usr/local/lib/python3.10/dist-packages/stardist/models/base.py in _predict_instances_generator(self, img, axes, normalizer, sparse, prob_thresh, nms_thresh, scale, n_tiles, show_tile_progress, verbose, return_labels, predict_kwargs, nms_kwargs, overlap_label, return_predict)
727 res = None
728 if sparse:
--> 729 for res in self._predict_sparse_generator(img, axes=axes, normalizer=normalizer, n_tiles=n_tiles,
730 prob_thresh=prob_thresh, show_tile_progress=show_tile_progress, **predict_kwargs):
731 if res is None:
/usr/local/lib/python3.10/dist-packages/stardist/models/base.py in _predict_sparse_generator(self, img, prob_thresh, axes, normalizer, n_tiles, show_tile_progress, b, **predict_kwargs)
538 predict_kwargs.setdefault('verbose', 0)
539 x, axes, axes_net, axes_net_div_by, _permute_axes, resizer, n_tiles, grid, grid_dict, channel, predict_direct, tiling_setup =
--> 540 self._predict_setup(img, axes, normalizer, n_tiles, show_tile_progress, predict_kwargs)
541
542 def _prep(prob, dist):
/usr/local/lib/python3.10/dist-packages/stardist/models/base.py in _predict_setup(self, img, axes, normalizer, n_tiles, show_tile_progress, predict_kwargs)
379
380 channel = axes_dict(axes_net)['C']
--> 381 self.config.n_channel_in == x.shape[channel] or _raise(ValueError())
382 axes_net_div_by = self._axes_div_by(axes_net)
383
/usr/local/lib/python3.10/dist-packages/csbdeep/utils/utils.py in _raise(e)
89 def _raise(e):
90 if isinstance(e, BaseException):
---> 91 raise e
92 else:
93 raise ValueError(e)
ValueError:`
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