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GenLie: A Global-Enhanced Lie Detection Network under Sparsity and Semantic Interference

About

Video-based lie detection aims to identify deceptive behaviors from visual cues. Despite recent progress, its core challenge lies in learning sparse yet discriminative representations. Deceptive signals are typically subtle and short-lived, easily overwhelmed by redundant information, while individual and contextual variations introduce strong identity-related noise. To address this issue, we propose GenLie, a Global-Enhanced Lie Detection Network that performs local feature modeling under global supervision. Specifically, sparse and subtle deceptive cues are captured at the local level, while global supervision and optimization ensure robust and discriminative representations by suppressing identity-related noise. Experiments on three public datasets, covering both high- and low-stakes scenarios, show that GenLie consistently outperforms state-of-the-art methods. Source code is available at https://github.com/AliasDictusZ1/GenLie.

Zongshun Zhang, Yao Liu, Qiao Liu, Xuefeng Peng, Peiyuan Jiang, Jiaye Yang, Daibing Yao, Wei Lin• 2026

Related benchmarks

TaskDatasetResultRank
Deception DetectionMuDD Video modality (test)
F1 Score16.2
11
Deception DetectionMuDD Audio modality (test)
F1 Score18.1
11
Deception DetectionMDPE
F1 Score38.97
10
Deception DetectionSEUMLD
F1 Score42.39
10
Deception DetectionReal-Life Trial
F1 Score93.44
10
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