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Dose the test reuslts on several images rather than whole videos represent the performance of video semantic segmentation methods? about ifr HOT 4 CLOSED

imzhangyd avatar imzhangyd commented on August 25, 2024
Dose the test reuslts on several images rather than whole videos represent the performance of video semantic segmentation methods?

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Comments (4)

jfzhuang avatar jfzhuang commented on August 25, 2024

It is a compromise strategy to evaluete models on sampled key frames with labels because existing datasets can not provide per-frame labels for evaluation due to their high cost. And you are correct. It is more reasonable to evaluate on each frame if per-frame labels are given. Besides, some recent works proposed to evaluate temporal consistency (TC), which can represent the consistency of segmentation results. In our paper, we provide TC scores in Table 9.

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imzhangyd avatar imzhangyd commented on August 25, 2024

Thanks for your patience. I was wondering whether the main difference between video semantic segmentation and semi-supervised video semantic segmentation is whether training with unlabeled video.

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jfzhuang avatar jfzhuang commented on August 25, 2024

Yes, you are correct.

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imzhangyd avatar imzhangyd commented on August 25, 2024

Thank you very much! Some VSS methods aggregate features of neighborhood unlabeled frames to segment the current frame, so I think these methods also use unlabeled frames for training and they can be considered semi-supervised. Did I misunderstand something here?

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