Hi, what I understand is that ActiveNeRF selects the best subset of samples for the model from a large number of samples, but in this way, it still need a larger number of samples first. In practical applications, it may only have less than ten images for a scene, and in this case, ActiveNeRF cannot be used. I wonder if I misunderstand the model. Secondly, compared to NeRF, ActiveNeRF only uses a small number of samples to train and ultimately achieves similar results. Can it be considered that its feature extraction ability and model fitting ability are stronger, similar to those models with feew-shot input. Looking forward to your reply!
Hi, what I understand is that ActiveNeRF selects the best subset of samples for the model from a large number of samples, but in this way, it still need a larger number of samples first. In practical applications, it may only have less than ten images for a scene, and in this case, ActiveNeRF cannot be used. I wonder if I misunderstand the model. Secondly, compared to NeRF, ActiveNeRF only uses a small number of samples to train and ultimately achieves similar results. Can it be considered that its feature extraction ability and model fitting ability are stronger, similar to those models with feew-shot input. Looking forward to your reply!