Hespi: a pipeline for automatically detecting information from herbarium specimen sheets

Hespi:一个用于自动检测植物标本册信息信息的流程

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Abstract

Specimen-associated biodiversity data are crucial for biological, environmental, and conservation sciences. A rate shift is needed to extract data from specimen images efficiently, moving beyond human-mediated transcription. We developed Hespi (for herbarium specimen sheet pipeline) using advanced computer vision techniques to extract authoritative data applicable for a range of research purposes from primary specimen labels on herbarium specimens. Hespi integrates two object detection models: one for detecting the components of the sheet and another for fields on the primary specimen label. It classifies labels as printed, typed, handwritten, or mixed and uses optical character recognition and handwritten text recognition for extraction. The text is then corrected against authoritative taxon databases and refined using a multimodal large language model. Hespi accurately detects and extracts text from specimen sheets across international herbaria, and its modular design allows users to train and integrate custom models.

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