Skip to the main content

Original scientific paper

https://doi.org/10.17559/TV-20190604092100

Identification of Shadowed Areas to Improve Ragweed Leaf Segmentation

Tamas Storcz ; University of Pécs, Boszorkányút 2, 7624 Pécs, Hungary
Géza Várady* orcid id orcid.org/0000-0001-5427-913X ; University of Pécs, Boszorkányút 2, 7624 Pécs, Hungary
Zsolt Ercsey ; University of Pécs, Boszorkányút 2, 7624 Pécs, Hungary


Full text: english pdf 1.172 Kb

page 1236-1243

downloads: 444

cite


Abstract

As part of a project targeting geometrical structure analysis and identification of ragweed leaves, sample images were created. Even though images were taken under near optimal conditions, the samples still contain noise of cast shadow. The proposed method improves chromaticity based primary shape segmentation efficiency by identification and re-classification of the shadowed areas. The primary classification of each point is done generally based on thresholding the Hue channel of Hue/Saturation/Value color space. In this work, the primary classification is enhanced by thresholding an intra-class normalized weight computed from the class specific Value channel. The corrective step is the removal of areas marked as shadow from the object class. The idea is based on the assumption that the image contains a single, flat leaf in front of a homogeneous background, but there are no color and illumination restrictions. Thus, parameters of the imaging system and the light sources have influence on homogeneity of image parts; however vague shadows differ only in intensity, and hard shadows can only be dropped on the background.

Keywords

chromaticity; circular thresholding; histogram; intensity; normalized weight; shadow

Hrčak ID:

260801

URI

https://hrcak.srce.hr/260801

Publication date:

22.7.2021.

Visits: 1.157 *