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这是我按照ICRA权重得到的可视化轨迹,跟您的差距较大,请问还需要添加别的设置吗?其次我也按照链接https://github.com/ShuweiShao/AF-SfMLearner/issues/8在训练时将F. interpolate和F. grid_sample后都加个align_corners=True进行了训练效果依旧不好。希望得到您的回复,谢谢!
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hi,ICRA的论文中并没有进行位姿的可视化,请使用MIA期刊论文的权重可视化轨迹。
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您好,我使用MIA权重可视化的效果为 我在evaluate_pose中pred_poses = np.concatenate(pred_poses)后添加如下 np.savez_compressed('./splits/endovis/val.npz', data=np.array(pred_poses))保存预测pose权重,然后在可视化位姿轨迹中的效果如上图,依旧存在差距
请问是直接加载的模型权重可视化的嘛?感觉像是某个操作出现了问题。
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这是我按照ICRA权重得到的可视化轨迹,跟您的差距较大,请问还需要添加别的设置吗?其次我也按照链接https://github.com/ShuweiShao/AF-SfMLearner/issues/8在训练时将F. interpolate和F. grid_sample后都加个align_corners=True进行了训练效果依旧不好。希望得到您的回复,谢谢!
The text was updated successfully, but these errors were encountered: