Comments (9)
I have tested G_FSOD's split_1 1_shot seed_0 many times. Your paper only mentions the experimental result of taking the average of ten experiments. Your experimental result is 57.03, while mine is between 50-55. What is the cause of this problem? of? Have you encountered similar problems during your experiments?
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Hi, I see that someone has reproduced your experimental results, but I haven't been able to reproduce them. I would like to ask if the version of python, cuda, pytorch has a big impact on the results? Because I use a 3090 graphics card, the version of cuda and pytorch cannot be consistent with the author. cuda==11.0 torch==1.7 detectron2==0.3 Only the number of GPUs is modified in the code, and the others are not modified. The base model provided by the author is used in the reproduction process, and the experimental results of the reproduction are quite different from the author. And it fluctuates a lot.
I haven't tested the code yet, but according to my experience, based on the framework of Detectron2 implementation, there is a big difference between the implementation results of 1 3090 graphics card and 2 2080Ti graphics cards. I guess it is because of Detectron2 optimized multi-card training.
2 3090 may work, you can try graphics 2 cards.
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@RuoyuChen10 Ok, I see what you mean, but I don't have a machine with two 3090 graphics cards. I'll try running on 2 2080Ti graphics cards in a while. thank you.
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Hi, I came up with the same issue. Have you reproduced the results yet in 2 cards setting?
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@RuoyuChen10 Ok, I see what you mean, but I don't have a machine with two 3090 graphics cards. I'll try running on 2 2080Ti graphics cards in a while. thank you.
Can you tell me how much time it takes to train a epoch on COCO using 2 2080TI?
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I run your code under 2080 with batchsize=2 per gpu,i got the lowwer Ap ,how can i get the ap like your paper?
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Hi, I see that someone has reproduced your experimental results, but I haven't been able to reproduce them. I would like to ask if the version of python, cuda, pytorch has a big impact on the results? Because I use a 3090 graphics card, the version of cuda and pytorch cannot be consistent with the author. cuda==11.0 torch==1.7 detectron2==0.3 Only the number of GPUs is modified in the code, and the others are not modified. The base model provided by the author is used in the reproduction process, and the experimental results of the reproduction are quite different from the author. And it fluctuates a lot.
I met a problem。rm: cannot remove 'checkpoints/voc/defrcn/defrcn_fsod_r101_novel1/tfa-like/5shot_seed9/model_final.pth': No such file or directory。can you help me?
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Hi, I see that someone has reproduced your experimental results, but I haven't been able to reproduce them. I would like to ask if the version of python, cuda, pytorch has a big impact on the results? Because I use a 3090 graphics card, the version of cuda and pytorch cannot be consistent with the author. cuda==11.0 torch==1.7 detectron2==0.3 Only the number of GPUs is modified in the code, and the others are not modified. The base model provided by the author is used in the reproduction process, and the experimental results of the reproduction are quite different from the author. And it fluctuates a lot.
May I ask if you later reproduced the results of the paper and how did you do it? I also encountered the same problem now, I ran on two 2080 with bs=4
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I have the same problem. There is roughly a 3-7 difference between my reproduced results and those in Table 6 with AP, AP50, AP75, bAP, and nAP. Does the machine used have much to do with the results? I am using two 1080s with a batch size of 4.
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Related Issues (20)
- How can I customize new hyperparameters in detectron2
- argument 'alpha' must be Number, not NoneType HOT 2
- 可视化
- AssertionError: Checkpoint checkpoints/voc/mydefrcn/defrcn_det_r101_base1/model_reset_remove.pth not found! HOT 6
- Why the different number of images on inference?
- How to reproduce the results in Figure4(b)? HOT 1
- Help with multi-GPU training in Google Colab HOT 1
- Guide on Fine Tuning
- TypeError: init() got an unexpected keyword argument 'first_stride' HOT 2
- Where is pascal VOC metasplit located?
- Out of memory error during evaluation but training works fine! HOT 3
- running Inference on model
- Why final checkpoint is removed in run_voc.sh script? HOT 1
- Do we need to give support image during inference? HOT 1
- cuda version HOT 2
- About the fine tune problems
- main.py: error: unrecognized arguments: --opts MODEL.WEIGHTS /public/home/jd_fky/project/DeFRCN/data/ImageNetPretrained/MSRA/R-101.pkl OUTPUT_DIR checkpoints/coco/defrcn/defrcn_det_r101_base 3 I don't know why running main.py causes this problem HOT 1
- fine-tuning on my cutsomized dataset
- OutOfMemoryError with PrototypicalCalibrationBlock HOT 5
- RuntimeError: CUDA error: no kernel image is available for execution on the device
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