Awesome
Code of Rethinking the Form of Latent States in Image Captioning
Overview
Summarization
-
We empirically found representing latent states as 2D maps is better than 1D vectors, both quantitatively and qualitatively, due to the spatial locality preserved in the latent states.
-
Quantitatively, with similar numbers of parameters, RNN-2DS (i.e. 2D states without gate functions) already outperforms LSTM-1DS (i.e. 1D states with LSTM cells). (Green: RNN-2DS, Red: LSTM-1DS)
-
Qualitatively, spatial locality leads to visual interpretation and manipulation of the decoding process.
- Manipulation on the spatial grids
- Manipulation on the channels
- Interpretation on the internal dynamics
- Interpretation on the word-channel associations
Citation
@inproceedings{dai2018rethinking,
title={Rethinking the Form of Latent States in Image Captioning},
author={Dai, Bo and Ye, Deming and Lin, Dahua},
booktitle={ECCV},
year={2018}
}