Ecosyste.ms: Issues
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GitHub / bubbliiiing/yolact-pytorch issues and pull requests
#24 - File "mtrand.pyx", line 920, in numpy.random.mtrand.RandomState.choice ValueError: setting an array element with a sequence. The requested array has an inhomogeneous shape after 1 dimensions. The detected shape was (6,) + inhomogeneous part.
Issue -
State: open - Opened by dyhisbig 7 months ago
- 7 comments
#24 - File "mtrand.pyx", line 920, in numpy.random.mtrand.RandomState.choice ValueError: setting an array element with a sequence. The requested array has an inhomogeneous shape after 1 dimensions. The detected shape was (6,) + inhomogeneous part.
Issue -
State: open - Opened by dyhisbig 7 months ago
- 7 comments
#23 - 训练自己的数据集出现以下问题,(用eiseg生成的JSON文件进行coco_annotation)
Issue -
State: open - Opened by yang8050 9 months ago
- 5 comments
#23 - 训练自己的数据集出现以下问题,(用eiseg生成的JSON文件进行coco_annotation)
Issue -
State: open - Opened by yang8050 9 months ago
- 5 comments
#22 - 预测问题
Issue -
State: open - Opened by zhuasd 12 months ago
#22 - 预测问题
Issue -
State: open - Opened by zhuasd 12 months ago
#21 - 训练问题
Issue -
State: closed - Opened by zhuasd 12 months ago
#21 - 训练问题
Issue -
State: closed - Opened by zhuasd 12 months ago
#20 - 使用coco_annotion分割数据集时正常,开始训练后终端的num_train和num_val都显示为0,且训练直接结束,请问如何解决?
Issue -
State: open - Opened by chrisala666 over 1 year ago
- 3 comments
#20 - 使用coco_annotion分割数据集时正常,开始训练后终端的num_train和num_val都显示为0,且训练直接结束,请问如何解决?
Issue -
State: open - Opened by chrisala666 over 1 year ago
- 3 comments
#19 - 训练自己数据集时,用了1000张图片和1000个json仍旧显示这个问题?
Issue -
State: open - Opened by zhaoyyy620 over 1 year ago
- 3 comments
#19 - 训练自己数据集时,用了1000张图片和1000个json仍旧显示这个问题?
Issue -
State: open - Opened by zhaoyyy620 over 1 year ago
- 3 comments
#18 - 如何输出不同每个实例不同颜色的蒙版
Issue -
State: open - Opened by zoom521241 over 1 year ago
- 1 comment
#18 - 如何输出不同每个实例不同颜色的蒙版
Issue -
State: open - Opened by zoom521241 over 1 year ago
- 1 comment
#17 - TypeError: __init__() missing 1 required positional argument: 'dtype'
Issue -
State: open - Opened by Sun0532 over 1 year ago
- 2 comments
#17 - TypeError: __init__() missing 1 required positional argument: 'dtype'
Issue -
State: open - Opened by Sun0532 over 1 year ago
- 2 comments
#16 - How to deploy onnx models in C++?
Issue -
State: open - Opened by williamForHSP over 1 year ago
- 1 comment
#16 - How to deploy onnx models in C++?
Issue -
State: open - Opened by williamForHSP over 1 year ago
- 1 comment
#15 - An error was reported when I run the coco_annotation.py
Issue -
State: closed - Opened by PiBigStar5712 over 1 year ago
#14 - 为什么这个和keras版本的yolact相同数据集训练出来map差很多啊,超参数都一样。
Issue -
State: closed - Opened by PengboLi1998 over 1 year ago
#13 - 仅加载主干网络权重和加载整个模型权重的训练效果相差很大
Issue -
State: open - Opened by goodguyjameswin almost 2 years ago
- 6 comments
#12 - Anchor box values
Issue -
State: open - Opened by abhigoku10 almost 2 years ago
- 1 comment
#11 - 请问为什么同一类别的掩膜颜色是一样的呢?
Issue -
State: open - Opened by xuanzhiliu almost 2 years ago
- 1 comment
#10 - 请问为什么没有模型的配置文件config?
Issue -
State: open - Opened by 877816185 about 2 years ago
#9 - 输出图片背景设为黑色
Issue -
State: open - Opened by yilifan over 2 years ago
- 1 comment
#8 - coco数据集没有test_annotation文件要怎么预测呢?
Issue -
State: closed - Opened by charming2992 over 2 years ago
- 1 comment
#7 - 请问怎么测fps呀
Issue -
State: closed - Opened by charming2992 over 2 years ago
- 1 comment
#6 - 請問評估自己的模型時,可以得到各類別(class)自己的Precision嗎?
Issue -
State: open - Opened by dt54123 over 2 years ago
- 3 comments
#5 - 訓練coco數據集時發生error
Issue -
State: closed - Opened by Moris-Zhan over 2 years ago
- 13 comments
#4 - 不能转换CUDA tensor格式的数据,可以指导一下怎么怎么解决嘛
Issue -
State: open - Opened by yums24 over 2 years ago
- 1 comment
#3 - 請問輸入大小除了544x544還有其他選擇嗎?
Issue -
State: open - Opened by dt54123 almost 3 years ago
- 1 comment
#2 - 百度空間的預訓練權重檔案格式是.h5
Issue -
State: open - Opened by dt54123 almost 3 years ago
- 1 comment
#1 - 自定义数据集上训练过程中出现loss=='nan'
Issue -
State: open - Opened by serendipity999 almost 3 years ago
- 8 comments