Diversity-Informed Fusion for Sclerotinia Sclerotiorum and White Mold Detection

  • Rubens de C. Pereira UNICAMP / EMBRAPA / UFG / Wageningen University and Research
  • Díbio L. Borges UnB
  • Murillo Lobo EMBRAPA
  • Ricardo da S. Torres Wageningen University and Research
  • Helio Pedrini UNICAMP

Resumo


The white mold caused by the soilborne pathogen Sclerotinia sclerotiorum affects hundreds of plant hosts around the world. Early detection is important to leverage effective and timely responses that mitigate crop yield losses. This paper addresses the automatic detection of white mold based on computer vision methods. We introduce a Diversity-driven Object Detection Fusion framework, DiODeFusion, that takes advantages of complementary views provided by multiple detectors to improve prediction results. DiODeFusion relies on bounding-box-based diversity measures to determine the most promising detectors for use in fusion. Experiments were conducted on a recently created SWM dataset, considering the assessment of multiple diversity measures, detector selection approaches, and bounding-box fusion strategies. Experimental results show that DiODeFusion achieves gains of up to 2.0% in terms of the F1 metric using only three detectors, compared to strong fusion baselines that employ all available detectors.
Palavras-chave: Measurement, Graphics, Pathogens, Plant diseases, Pathology, Diversity reception, Detectors, Object detection, Machine learning, Light emitting diodes, Fusion, Diversity Measures, Plant disease epidemiology, Sclerotinia stem rot, Precision plant pathology
Publicado
30/09/2025
PEREIRA, Rubens de C.; BORGES, Díbio L.; LOBO, Murillo; TORRES, Ricardo da S.; PEDRINI, Helio. Diversity-Informed Fusion for Sclerotinia Sclerotiorum and White Mold Detection. In: CONFERENCE ON GRAPHICS, PATTERNS AND IMAGES (SIBGRAPI), 38. , 2025, Salvador/BA. Anais [...]. Porto Alegre: Sociedade Brasileira de Computação, 2025 . p. 158-163.