SeLiNet: Sentiment enriched Lightweight Network for Emotion Recognition in Images

CoRR(2023)

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摘要
In this paper, we propose a sentiment-enriched lightweight network SeLiNet and an end-to-end on-device pipeline for contextual emotion recognition in images. SeLiNet model consists of body feature extractor, image aesthetics feature extractor, and learning-based fusion network which jointly estimates discrete emotion and human sentiments tasks. On the EMOTIC dataset, the proposed approach achieves an Average Precision (AP) score of 27.17 in comparison to the baseline AP score of 27.38 while reducing the model size by >85%. In addition, we report an on-device AP score of 26.42 with reduction in model size by >93% when compared to the baseline.
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关键词
AP score,average precision score,contextual emotion recognition,discrete emotion,EMOTIC dataset,end-to-end on-device pipeline,feature extractor,fusion network,human sentiments tasks,image aesthetics,multitask learning,on-device AP score,SeLiNet model,sentiment-enriched lightweight network
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