ZS-F-VQA

GraphsImagesTextsIntroduced 2021-07-12

The ZS-F-VQA dataset is a new split of the F-VQA dataset for zero-shot problem. Firstly we obtain the original train/test split of F-VQA dataset and combine them together to filter out the triples whose answers appear in top-500 according to its occurrence frequency. Next, we randomly divide this set of answers into new training split (a.k.a. seen) As\mathcal{A}_s and testing split (a.k.a. unseen) Au\mathcal{A}_u at the ratio of 1:1. With reference to F-VQA standard dataset, the division process is repeated 5 times. For each (i,q,a)(i,q,a) triplet in original F-VQA dataset, it is divided into training set if aAsa \in \mathcal{A}_s. Else it is divided into testing set. The overlap of answer instance between training and testing set in F-VQA are 25652565 compared to 00 in ZS-F-VQA.