Identification of non-glandular trichome hairs in cannabis using vision-based deep learning methods

Alon Zvirin, Amitzur Shapira, Emma Attal, Tamar Gozlan, Arthur Soussan, Dafna De La Vega, Yehudit Harush, Ron Kimmel

Research output: Contribution to journalArticlepeer-review

Abstract

The detection of cannabis and cannabis-related products is a critical task for forensic laboratories and law enforcement agencies, given their harmful effects. Forensic laboratories analyze large quantities of plant material annually to identify genuine cannabis and its illicit substitutes. Ensuring accurate identification is essential for supporting judicial proceedings and combating drug-related crimes. The naked eye alone cannot distinguish between genuine cannabis and non-cannabis plant material that has been sprayed with synthetic cannabinoids, especially after distribution into the market. Reliable forensic identification typically requires two colorimetric tests (Duquenois-Levine and Fast Blue BB), as well as a drug laboratory expert test for affirmation or negation of cannabis hair (non-glandular trichomes), making the process time-consuming and resource-intensive. Here, we propose a novel deep learning-based computer vision method for identifying non-glandular trichome hairs in cannabis. A dataset of several thousand annotated microscope images was collected, including genuine cannabis and non-cannabis plant material apparently sprayed with synthetic cannabinoids. Ground-truth labels were established using three forensic tests, two chemical assays, and expert microscopic analysis, ensuring reliable classification. The proposed method demonstrated an accuracy exceeding 97% in distinguishing cannabis from non-cannabis plant material. These results suggest that deep learning can reliably identify non-glandular trichome hairs in cannabis based on microscopic trichome features, potentially reducing reliance on costly and time-consuming expert microscopic analysis. This framework provides forensic departments and law enforcement agencies with an efficient and accurate tool for identifying non-glandular trichome hairs in cannabis, supporting efforts to combat illicit drug trafficking.

Original languageEnglish
JournalJournal of Forensic Sciences
DOIs
StateAccepted/In press - 2025

Keywords

  • cannabis detection
  • colorimetric chemical tests
  • computer vision
  • cystoliths
  • deep learning
  • non-glandular trichomes
  • synthetic cannabinoids

All Science Journal Classification (ASJC) codes

  • Pathology and Forensic Medicine
  • Genetics

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