PhySE: A Psychological Framework for Real-Time AR-LLM Social Engineering Attacks

arXiv cs.AI / 4/28/2026

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Key Points

  • The paper introduces PhySE, a psychological framework for real-time AR-LLM social engineering attacks that can use AR glasses plus an LLM to profile targets and generate conversation guidance.
  • It identifies two practical bottlenecks in current AR-LLM social engineering: slow cold-start personalization due to retrieval-augmented generation delays, and ineffective static, handcrafted attack scripts that don’t align with established psychological theory.
  • PhySE proposes a VLM-based social context training approach to enable rapid on-the-fly profile generation, reducing early-turn latency.
  • It also proposes an adaptive psychological agent that selects psychological strategy classes dynamically based on how the target responds, rather than following fixed stages.
  • The authors evaluate PhySE via an IRB-approved study with 60 participants, producing a dataset of 360 annotated conversations across varied social scenarios.

Abstract

The emerging threat of AR-LLM-based Social Engineering (AR-LLM-SE) attacks (e.g. SEAR) poses a significant risk to real-world social interactions. In such an attack, a malicious actor uses Augmented Reality (AR) glasses to capture a target visual and vocal data. A Large Language Model (LLM) then analyzes this data to identify the individual and generate a detailed social profile. Subsequently, LLM-powered agents employ social engineering strategies, providing real-time conversation suggestions, to gain the target trust and ultimately execute phishing or other malicious acts. Despite its potential, the practical application of AR-LLM-SE faces two major bottlenecks, (1) Cold-start personalization, Current Retrieval-Augmented Generation (RAG) methods introduce critical delays in the earliest turns, slowing initial profile formation and disrupting real-time interaction, (2) Static Attack Strategies, Existing approaches rely on fixed-stage, handcrafted social engineering tactics that lack foundation in established psychological theory. To address these limitations, we propose PhySE, a novel framework with two core innovations, (1) VLM-Based SocialContext Training, To eliminate profiling delays, we efficiently pre-train a Visual Language Model (VLM) with social-context data, enabling rapid, on-the-fly profile generation, (2) Adaptive Psychological Agent, We introduce a psychological LLM that dynamically deploys distinct classes of psychological strategies based on target response, moving beyond static, handcrafted scripts. We evaluated PhySE through an IRB-approved user study with 60 participants, collecting a novel dataset of 360 annotated conversations across diverse social scenarios.