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object-detection
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Can I know what is the size of the Kinetics 400 dataset used to reproduce the result in this repo?
There are many links in Kinetics that have expired. As as result, everyone might not be using the same Kinetics dataset. As a reference, the statistics of the Kinetics dataset used in PySlowFast can be found here, https://github.com/facebookresearch/video-nonlocal-net/blob/master/DATASET.md. However, I cannot seem to find similar information for gluoncv. Will you guys be sharing the statistics and
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【已解决】关于AP=0的问题
我发现很多人在使用voc格式的数据集时,和我遇到了同样的问题,训练时AP一直为0,
今早,仔细检查后,我也找到了真正的原因,主要是数据加载的地方出现了问题,还是我们自己太不仔细了
解决流程思路: 解决YOLOX训练时AP为0
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When running TabularPredictor.fit(), I encounter a BrokenPipeError for some reason.
What is causing this?
Could it be due to OOM error?
Fitting model: XGBoost ...
-34.1179 = Validation root_mean_squared_error score
10.58s = Training runtime
0.03s = Validation runtime
Fitting model: NeuralNetMXNet ...
-34.2849 = Validation root_mean_squared_error score
43.63s =
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I'm training various model heads (HTC, cascade mask-rcnn, etc.) with the CBNetV2 backbone (implementation here) on a custom coco-format dataset with only bboxes. I'm using the following training and testing pipelines: