系统仿真学报 ›› 2026, Vol. 38 ›› Issue (3): 620-650.doi: 10.16182/j.issn1004731x.joss.25-0157
• 论文 • 上一篇
张毅, 许凯, 黎水林, 陈德峻, 曾云秀, 彭勇
收稿日期:2025-03-04
修回日期:2025-05-30
出版日期:2026-03-18
发布日期:2026-03-27
通讯作者:
许凯
第一作者简介:张毅(2001-),男,硕士生,研究方向为系统仿真与意图识别。
基金资助:Zhang Yi, Xu Kai, Li Shuilin, Chen Dejun, Zeng Yunxiu, Peng Yong
Received:2025-03-04
Revised:2025-05-30
Online:2026-03-18
Published:2026-03-27
Contact:
Xu Kai
摘要:
随着人工智能技术的发展,实现人机交互中的意图识别成为关键挑战之一。本文系统性地梳理了活动识别、计划识别和目的识别3个领域的研究现状,分析了从问题提出到当前发展的历程。回顾了各领域的主要研究方法,分析了活动识别的研究现状、计划识别的发展概况和目的识别的热点回溯。对问题的总体看法有助于厘清和分析研究境况,为提出统一方式解决人机交互中活动、计划和目的统一识别问题提供支撑。本文也对未来研究方向进行了展望,指出构建神经符号融合推理框架、鲁棒性先验知识生成与修正、对抗环境下的意图博弈理论以及跨领域应用驱动的技术迭代将是未来研究的重点。
中图分类号:
张毅,许凯,黎水林等 . 意图识别研究关键问题:活动、计划及目的识别概述[J]. 系统仿真学报, 2026, 38(3): 620-650.
Zhang Yi,Xu Kai,Li Shuilin,et al . Key Problems of Intent Recognition Research: A Survey on Activity, Plan and Goal Recognition[J]. Journal of System Simulation, 2026, 38(3): 620-650.
表2
活动识别算法分类研究历程
| 模型 | 方法 | 面临的挑战 | 解决的问题 | |
|---|---|---|---|---|
逻 辑 推 理 | 溯因推理 | 缺少真实数据 | 识别危险的活动 | |
| 线性时序溯因 | 复杂,计算成本高 | 识别视频监控识别 | ||
| 因果贝叶斯网络 | 动态环境不适应 | 识别老年人的活动 | ||
| 扩展贝叶斯溯因 | 统计关系模型推理效率低 | 一阶逻辑和概率图模型 | ||
机 器 学 习 | 概 率 | 分层动态贝叶斯网络 | 难适应用户行为的突然变化 | 用户日常活动的识别推断 |
| 分层马尔可夫模型 | 状态层次增加,计算效率低 | 分层模型共享相同子结构 | ||
| 无分层隐马尔科夫 | 特征选择耗时 | 机器人识别用户活动 | ||
| 条件随机场 | 无法适应动态环境 | 识别人类活动 | ||
非 概 率 | 决策树 | 位置和传感器数据的多样性 | 智能手机传感器识别活动 | |
| 支持向量机 | 复杂背景和动态变化识别差 | 空间-时间特征识别活动 | ||
深 度 学 习 | 判 别 式 | 全连接神经网络 | 过拟合,计算复杂 | 识别活动 |
| 卷积神经网络 | 自动识别人类活动 | |||
| 循环神经网络 | 原始传感器数据识别 | |||
生 成 式 | 深度信念网络 | 难以选择适合的分类特征 | 自动学习适合的特征 | |
| 难以捕捉细微的表情变化 | 自动学习区分表情的特征 | |||
| 深度玻耳兹曼机 | 资源受限设备上高资源消耗 | 智能手表上的活动识别 | ||
| 不同传感器数据的差异性 | 多传感器数据融合 | |||
| 自编码器 | 非线性目标的识别挑战 | 动态识别玩家动作 | ||
| 传感器噪声导致的低识别率 | 提高活动识别准确性 | |||
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