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WalterMa avatar WalterMa commented on May 30, 2024

Currently, the best map on VOC07 tests set is 0.6190 after 11 epoch training, much lower than original. I'm still working on this.
For now, use Gloun-CV will be a better choice, since it supports faster-rcnn after v0.2.

from gluon-faster-rcnn.

Ram-Godavarthi avatar Ram-Godavarthi commented on May 30, 2024

Hi,
I have done training on my own dataset and i got 70% accuracy after 4 epochs..
I want to visualize the output.. so i tried with demo script.. i gave 1 input image and tried with the trained model. i changed the class names in demo script.
but i got this error.. Could you please let me know whats the problem.. Thank You

Traceback (most recent call last):
File "demo_faster_rcnn.py", line 65, in
cls, scores, bboxes = net(data.as_in_context(ctx), im_info.as_in_context(ctx))
File "/home/ubuntu/anaconda3/lib/python3.6/site-packages/mxnet/gluon/block.py", line 413, in call
return self.forward(*args)
File "/home/ubuntu/anaconda3/lib/python3.6/site-packages/mxnet/gluon/block.py", line 629, in forward
return self.hybrid_forward(ndarray, x, *args, **params)
File "/home/ubuntu/gluon-faster-rcnn/rcnn/rcnn.py", line 69, in hybrid_forward
rois = self.proposal(rpn_cls_prob, rpn_bbox_pred, im_info)
File "/home/ubuntu/anaconda3/lib/python3.6/site-packages/mxnet/gluon/block.py", line 413, in call
return self.forward(*args)
File "/home/ubuntu/anaconda3/lib/python3.6/site-packages/mxnet/gluon/block.py", line 629, in forward
return self.hybrid_forward(ndarray, x, *args, **params)
File "/home/ubuntu/gluon-faster-rcnn/rcnn/proposal.py", line 32, in hybrid_forward
threshold=self.rpn_nms_threshold, rpn_min_size=self.rpn_min_size)
File "", line 82, in MultiProposal
File "/home/ubuntu/anaconda3/lib/python3.6/site-packages/mxnet/_ctypes/ndarray.py", line 92, in _imperative_invoke
ctypes.byref(out_stypes)))
File "/home/ubuntu/anaconda3/lib/python3.6/site-packages/mxnet/base.py", line 149, in check_call
raise MXNetError(py_str(_LIB.MXGetLastError()))
mxnet.base.MXNetError: Cannot find argument 'cls_prob', Possible Arguments:
rpn_pre_nms_top_n : int, optional, default='6000'
Number of top scoring boxes to keep after applying NMS to RPN proposals
rpn_post_nms_top_n : int, optional, default='300'
Overlap threshold used for non-maximumsuppresion(suppress boxes with IoU >= this threshold
threshold : float, optional, default=0.7
NMS value, below which to suppress.
rpn_min_size : int, optional, default='16'
Minimum height or width in proposal
scales : tuple of , optional, default=[4,8,16,32]
Used to generate anchor windows by enumerating scales
ratios : tuple of , optional, default=[0.5,1,2]
Used to generate anchor windows by enumerating ratios
feature_stride : int, optional, default='16'
The size of the receptive field each unit in the convolution layer of the rpn,for example the product of all stride's prior to this layer.
output_score : boolean, optional, default=0
Add score to outputs
iou_loss : boolean, optional, default=0
Usage of IoU Loss
, in operator _contrib_MultiProposal(name="", feature_stride="16", ratios="(0.5, 1, 2)", rpn_min_size="16", scales="(8, 16, 32)", rpn_post_nms_top_n="300", rpn_pre_nms_top_n="6000", threshold="0.7", cls_prob="
[[[[9.2525011e-01 9.8686647e-01 9.9559492e-01 ... 9.6093690e-01
9.3473071e-01 8.3388972e-01]
[9.8144472e-01 9.9909139e-01 9.9984789e-01 ... 9.9409735e-01
9.8589975e-01 9.3193233e-01]
[9.8883343e-01 9.9964535e-01 9.9995410e-01 ... 9.9763453e-01
9.9354243e-01 9.5571983e-01]
...
[9.8543328e-01 9.9948043e-01 9.9991584e-01 ... 9.9969471e-01
9.9917930e-01 9.8851913e-01]
[9.7469234e-01 9.9870670e-01 9.9970120e-01 ... 9.9901140e-01
9.9767345e-01 9.7834754e-01]
[9.0814865e-01 9.8365211e-01 9.9276966e-01 ... 9.8466349e-01
9.7399849e-01 9.0880662e-01]]

[[9.0745032e-01 9.8171026e-01 9.9309546e-01 ... 9.4973421e-01
9.1728598e-01 8.1418854e-01]
[9.7337264e-01 9.9846858e-01 9.9970394e-01 ... 9.9094427e-01
9.7995251e-01 9.1768110e-01]
[9.8243284e-01 9.9936765e-01 9.9990177e-01 ... 9.9625152e-01
9.9037081e-01 9.4557309e-01]
...
[9.7682333e-01 9.9898654e-01 9.9980742e-01 ... 9.9938107e-01
9.9859077e-01 9.8415011e-01]
[9.6041822e-01 9.9727988e-01 9.9929476e-01 ... 9.9794215e-01
9.9601054e-01 9.7078675e-01]
[8.7193352e-01 9.7200722e-01 9.8639816e-01 ... 9.7515827e-01
9.6249181e-01 8.8967586e-01]]

[[5.2806801e-01 5.3886396e-01 5.5010569e-01 ... 5.2669793e-01
5.2231640e-01 5.0962281e-01]
[5.3768706e-01 5.5899465e-01 5.7622200e-01 ... 5.5065542e-01
5.4214233e-01 5.2825642e-01]
[5.4670048e-01 5.8282024e-01 6.0394657e-01 ... 5.6064773e-01
5.5870861e-01 5.4004127e-01]
...
[5.3445053e-01 5.7814318e-01 6.0343522e-01 ... 5.9942263e-01
5.9564185e-01 5.6060779e-01]
[5.3276056e-01 5.7079929e-01 5.9411222e-01 ... 5.9032643e-01
5.8910215e-01 5.5843079e-01]
[5.2759832e-01 5.5251533e-01 5.7285386e-01 ... 5.6627262e-01
5.6415069e-01 5.4235542e-01]]

...

[[1.6489255e-01 5.4860741e-02 2.7824294e-02 ... 1.1167015e-01
1.5454119e-01 2.7348977e-01]
[7.4070774e-02 1.0540956e-02 3.4242510e-03 ... 3.8886167e-02
6.8945184e-02 1.8131968e-01]
[6.2780201e-02 6.9735665e-03 1.9518270e-03 ... 2.3429820e-02
4.5364555e-02 1.4465846e-01]
...
[8.8465296e-02 1.4774417e-02 5.4020169e-03 ... 1.1072693e-02
1.9699827e-02 8.5111000e-02]
[1.4203803e-01 3.7630506e-02 2.2168955e-02 ... 3.7781410e-02
5.5475168e-02 1.4689194e-01]
[2.8729475e-01 1.7887905e-01 1.5341425e-01 ... 1.8521468e-01
2.1700267e-01 3.0219343e-01]]

[[7.6535888e-02 1.3174757e-02 4.5662634e-03 ... 3.9024629e-02
6.6420421e-02 1.6296616e-01]
[1.8801216e-02 8.8067626e-04 1.5799509e-04 ... 5.9979130e-03
1.4321312e-02 6.7583486e-02]
[1.2135372e-02 3.7127602e-04 5.5430377e-05 ... 2.5837927e-03
6.8379878e-03 4.4826828e-02]
...
[1.6011752e-02 5.7889975e-04 1.1127151e-04 ... 3.9832355e-04
9.8138128e-04 1.2958074e-02]
[2.6029671e-02 1.4883390e-03 3.9916934e-04 ... 1.2645581e-03
2.7250603e-03 2.4580965e-02]
[1.0069502e-01 1.9385004e-02 9.5264316e-03 ... 1.9384181e-02
3.1448375e-02 1.0509791e-01]]

[[4.3997696e-01 3.9228746e-01 3.6535779e-01 ... 4.2972672e-01
4.3877992e-01 4.6890491e-01]
[4.0322891e-01 3.3196816e-01 3.0024055e-01 ... 3.9013031e-01
4.0616569e-01 4.5436901e-01]
[4.0472379e-01 3.2188171e-01 2.8730047e-01 ... 3.8169590e-01
3.9514536e-01 4.5027012e-01]
...
[4.1938949e-01 3.4382537e-01 3.1303972e-01 ... 3.3924583e-01
3.4913608e-01 4.1282722e-01]
[4.3390730e-01 3.7113073e-01 3.4658235e-01 ... 3.7191394e-01
3.8552991e-01 4.3190357e-01]
[4.6732298e-01 4.3559861e-01 4.2490643e-01 ... 4.4331262e-01
4.5451128e-01 4.7383672e-01]]]]
<NDArray 1x18x37x37 @gpu(0)>")

from gluon-faster-rcnn.

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