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All About Knowledge Graphs for Actions

About

Current action recognition systems require large amounts of training data for recognizing an action. Recent works have explored the paradigm of zero-shot and few-shot learning to learn classifiers for unseen categories or categories with few labels. Following similar paradigms in object recognition, these approaches utilize external sources of knowledge (eg. knowledge graphs from language domains). However, unlike objects, it is unclear what is the best knowledge representation for actions. In this paper, we intend to gain a better understanding of knowledge graphs (KGs) that can be utilized for zero-shot and few-shot action recognition. In particular, we study three different construction mechanisms for KGs: action embeddings, action-object embeddings, visual embeddings. We present extensive analysis of the impact of different KGs in different experimental setups. Finally, to enable a systematic study of zero-shot and few-shot approaches, we propose an improved evaluation paradigm based on UCF101, HMDB51, and Charades datasets for knowledge transfer from models trained on Kinetics.

Pallabi Ghosh, Nirat Saini, Larry S. Davis, Abhinav Shrivastava• 2020

Related benchmarks

TaskDatasetResultRank
Action RecognitionUCF101 (Split 1)--
105
Action RecognitionKinetics-600 (test)
Top-1 Accuracy22.3
84
Zero-shot Action RecognitionKinetics ZSAR
Top-1 Acc22.3
8
Action RecognitionUCF-101 (Split 2)
Accuracy72.6
7
Action RecognitionUCF-101 (split 3)
Accuracy71.57
7
Action RecognitionHMDB51 (26/25)--
5
Action RecognitionUCF101 (50-51 split)--
5
Action RecognitionUCF101 (Split 4)
Accuracy70.85
4
Action RecognitionUCF101 Mean over 5 random splits
Mean Accuracy69.61
4
Action RecognitionUCF101 (23-78 split)
Mean Accuracy50.13
4
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