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武老师好! 在原论文中,我没有看到您提出方法Single-DGOD 及Faster rcnn的输入图片尺寸,请问老师可以说明这两种算法的输入图片尺寸吗?谢谢!
The text was updated successfully, but these errors were encountered:
感谢关注,是(384, 600)
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好的好的,对了,请问武老师,您们另一份工作Prompt-Driven Dynamic Object-Centric Learning for Single Domain Generalization在diverse_datasets 数据集中进行跨域目标检测时,输入图片的尺寸是多少呢?
控制是长边最大1333,短边最大600
好的好的,感谢武老师悉心答疑!祝老师工作顺心,身体健康!
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武老师好!
在原论文中,我没有看到您提出方法Single-DGOD 及Faster rcnn的输入图片尺寸,请问老师可以说明这两种算法的输入图片尺寸吗?谢谢!
The text was updated successfully, but these errors were encountered: