Autism Stereotyped Behavior Detection (Spinning / Hand-Flapping) | 自闭症儿童刻板行为识别(转圈/摆手)
v1.0.0Using a fixed camera in rehabilitation centers or homes, the system analyzes children's behavior videos with pose estimation and temporal action detection to recognize repetitive stereotyped behaviors, including spinning (body rotation ≥ 360°), hand flapping (non-functional repetitive arm movement), body rocking (rhythmic forward-backward or side-to-side trunk motion), etc. It counts the frequency (events per hour) and duration of each behavior and generates a behavior report. The skill helps therapists and parents objectively record behavior changes and evaluate intervention effects. Application scenarios: autism rehabilitation institutions, special-education schools, home interventions. Real-time monitoring; the system automatically generates daily / weekly stereotyped-behavior statistics to support rehabilitation planning. Skill features: stereotyped behaviors are a core symptom of autism, and changes in frequency / duration are important indicators of intervention effectiveness. Automatic AI recording reduces therapists' workload, enables long-term continuous monitoring, and provides data support for individualized intervention. Can be integrated into rehabilitation-center management systems or home-rehabilitation apps. | 通过康复机构或家庭固定摄像头,分析儿童行为视频,利用姿态估计和时序动作检测技术识别重复性刻板动作,包括转圈(身体旋转360°以上)、摆手(手臂非功能性重复摆动)、摇晃(躯干前后或左右有节律摆动)等。统计每种刻板行为的频次(次/小时)和单次持续时间,生成行为报告。该技能可辅助康复师和家长客观记录行为变化,评估干预效果。应用场景:自闭症康复机构、特殊教育学校、家庭干预。系统实时监测,自动生成每日/每周刻板行为统计报告,为康复计划提供数据支持。技能特点:刻板行为是自闭症的核心症状之一,其频率和持续时间变化是评估干预效果的重要依据。通过AI自动监测记录,可减轻康复师负担,实现长时间连续监测,为个性化干预提供数据支持。该技能可集成到康复机构管理系统或家庭康复APP中。