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Recurrent Models for Situation Recognition

About

This work proposes Recurrent Neural Network (RNN) models to predict structured 'image situations' -- actions and noun entities fulfilling semantic roles related to the action. In contrast to prior work relying on Conditional Random Fields (CRFs), we use a specialized action prediction network followed by an RNN for noun prediction. Our system obtains state-of-the-art accuracy on the challenging recent imSitu dataset, beating CRF-based models, including ones trained with additional data. Further, we show that specialized features learned from situation prediction can be transferred to the task of image captioning to more accurately describe human-object interactions.

Arun Mallya, Svetlana Lazebnik• 2017

Related benchmarks

TaskDatasetResultRank
Grounded Situation RecognitionSWiG (dev)
Value Accuracy70.48
51
Grounded Situation RecognitionSWiG (test)--
33
Situation RecognitionimSitu (test)
Value Accuracy70.27
22
Grounded Situation RecognitionSWiG v1 (dev)
Top-1 Predicted Verb Accuracy38.83
21
Situation RecognitionimSitu (dev)
Value Accuracy70.48
18
Situation PredictionimSitu (test)
Top-1 Verb Acc35.9
13
Grounded Situation RecognitionSWiG 1.0 (test)
Top-1 Verb Acc35.9
13
Caption GenerationCOCO Karpathy 5000 (test)
BLEU-171.5
9
Caption GenerationCOCO 2014 (test)
BLEU-1 (c5)71.2
7
Caption GenerationCOCO Karpathy variant 4000 (test)--
1
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