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arxiv: 1711.05355 · v2 · pith:RPARUR42new · submitted 2017-11-14 · 📡 eess.AS · cs.SD· stat.ML

Automatic Conflict Detection in Police Body-Worn Audio

classification 📡 eess.AS cs.SDstat.ML
keywords conflictbody-wornaudioautomaticdetectionpoliceadaptiveadvent
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Automatic conflict detection has grown in relevance with the advent of body-worn technology, but existing metrics such as turn-taking and overlap are poor indicators of conflict in police-public interactions. Moreover, standard techniques to compute them fall short when applied to such diversified and noisy contexts. We develop a pipeline catered to this task combining adaptive noise removal, non-speech filtering and new measures of conflict based on the repetition and intensity of phrases in speech. We demonstrate the effectiveness of our approach on body-worn audio data collected by the Los Angeles Police Department.

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