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Towards Lexical Analysis of Dog Vocalizations via Online Videos

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arxiv 2309.13086 v1 pith:RXJ45ZGJ submitted 2023-09-21 cs.SD cs.CLcs.LGeess.AS

Towards Lexical Analysis of Dog Vocalizations via Online Videos

classification cs.SD cs.CLcs.LGeess.AS
keywords semanticstypesvocalizationsactivityanalysisanimallocationsemantic
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Deciphering the semantics of animal language has been a grand challenge. This study presents a data-driven investigation into the semantics of dog vocalizations via correlating different sound types with consistent semantics. We first present a new dataset of Shiba Inu sounds, along with contextual information such as location and activity, collected from YouTube with a well-constructed pipeline. The framework is also applicable to other animal species. Based on the analysis of conditioned probability between dog vocalizations and corresponding location and activity, we discover supporting evidence for previous heuristic research on the semantic meaning of various dog sounds. For instance, growls can signify interactions. Furthermore, our study yields new insights that existing word types can be subdivided into finer-grained subtypes and minimal semantic unit for Shiba Inu is word-related. For example, whimper can be subdivided into two types, attention-seeking and discomfort.

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