Visual Commonsense Representation Learning via Causal Inference.

CVPR Workshops(2020)

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摘要
We present a novel unsupervised feature representation learning method, Visual Commonsense Region-based Convolutional Neural Network (VC R-CNN1), to serve as an improved visual region encoder for high-level tasks such as captioning and VQA. Given a set of detected object regions in an image (e.g., using Faster R-CNN), like any other unsupervised feature learning methods (e.g., word2vec), the proxy training objective of VC R-CNN is to predict the contextual objects of a region. However, they are fundamentally different: the prediction of VC R-CNN is by using causal intervention: P(Y vertical bar do(X)), while others are by using the conventional likelihood: P(Y vertical bar X). We extensively apply VC R-CNN features in prevailing models of two popular tasks: Image Captioning and VQA, and observe consistent performance boosts across all the methods, achieving many new state-of-the-arts(2).
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关键词
VQA,Faster R-CNN,unsupervised feature learning methods,word2vec,contextual objects,causal intervention,VC R-CNN features,image captioning,causal inference,unsupervised feature representation learning method,visual commonsense region-based convolutional neural network,visual region encoder
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