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Main Authors: Liu, Jiyu, Huang, Yong, Lu, Yanzhao, Tie, Yun, Tu, Wanqing
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2604.05642
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author Liu, Jiyu
Huang, Yong
Lu, Yanzhao
Tie, Yun
Tu, Wanqing
author_facet Liu, Jiyu
Huang, Yong
Lu, Yanzhao
Tie, Yun
Tu, Wanqing
contents This paper studies the creation of textual descriptions of user activities and interactions on smartphones. Our approach of referring to encrypted mobile traffic exceeds traditional smartphone activity classification methods in terms of model scalability and output readability. The paper addresses two obstacles to the realization of this idea: the semantic gap between traffic features and smartphone activity captions, and the lack of textually annotated traffic data. To overcome these challenges, we introduce a novel smartphone activity captioning system, called T2T (Traffic-to-Text). T2T consists of a flow feature encoder that converts low-level traffic characteristics into meaningful latent features and a caption decoder to yield readable transcripts of smartphone activities. In addition, T2T achieves the automatic textual annotation of mobile traffic by feeding synchronized screen capture videos into the Qwen-VL-Max vision-language model, and proposing multi-stage losses for effective cross-model training. We evaluate T2T on 40,000 traffic-description pairs collected in two real-world environments, involving 8 smartphone users and 20 mobile apps. T2T achieves a BLEU-4 score of 58.1, a METEOR score of 38.3, a ROUGE-L score of 70.5, and a CIDEr score of 108.7. The quantitative and qualitative analyses show that T2T can generate semantically accurate captions that are comparable to the vision-language model.
format Preprint
id arxiv_https___arxiv_org_abs_2604_05642
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle T2T: Captioning Smartphone Activities Using Mobile Traffic
Liu, Jiyu
Huang, Yong
Lu, Yanzhao
Tie, Yun
Tu, Wanqing
Cryptography and Security
This paper studies the creation of textual descriptions of user activities and interactions on smartphones. Our approach of referring to encrypted mobile traffic exceeds traditional smartphone activity classification methods in terms of model scalability and output readability. The paper addresses two obstacles to the realization of this idea: the semantic gap between traffic features and smartphone activity captions, and the lack of textually annotated traffic data. To overcome these challenges, we introduce a novel smartphone activity captioning system, called T2T (Traffic-to-Text). T2T consists of a flow feature encoder that converts low-level traffic characteristics into meaningful latent features and a caption decoder to yield readable transcripts of smartphone activities. In addition, T2T achieves the automatic textual annotation of mobile traffic by feeding synchronized screen capture videos into the Qwen-VL-Max vision-language model, and proposing multi-stage losses for effective cross-model training. We evaluate T2T on 40,000 traffic-description pairs collected in two real-world environments, involving 8 smartphone users and 20 mobile apps. T2T achieves a BLEU-4 score of 58.1, a METEOR score of 38.3, a ROUGE-L score of 70.5, and a CIDEr score of 108.7. The quantitative and qualitative analyses show that T2T can generate semantically accurate captions that are comparable to the vision-language model.
title T2T: Captioning Smartphone Activities Using Mobile Traffic
topic Cryptography and Security
url https://arxiv.org/abs/2604.05642