# Oblique-view video tracking and density-based counting: accurate counting of late-stage rapeseed seedlings for breeding assessment

**Authors:** Bowen Luo, Yuang Yang, Kuanyan Zhang, Xuan Lv, Yujie Liu, Yicheng Yang, Fugui Zhang, Lu Liu, Gang Zhang, Xiaole Wang, Zhenchao Wu

PMC · DOI: 10.3389/fpls.2026.1770912 · Frontiers in Plant Science · 2026-02-17

## TL;DR

A new automated method called CropTriangulator accurately counts rapeseed seedlings using smartphone videos, improving efficiency and accuracy over traditional methods.

## Contribution

CropTriangulator introduces a novel video tracking and counting system optimized for oblique-view rapeseed seedling counting in field environments.

## Key findings

- CropTriangulator achieved 97.13% counting accuracy at 45° oblique view, outperforming vertical view by 14%.
- AdapDBSCAN reduced over-counting compared to fixed-parameter DBSCAN, and SORT had a lower ID switch rate than DeepSORT.
- The 45° oblique view was proven optimal for rapeseed seedling counting with an R-squared of 0.917 for row-based counts.

## Abstract

Accurate counting of late-stage rapeseed seedlings is critical for yield estimation and field management, while traditional manual counting is inefficient and labor-intensive, calling for an automated counting method. A novel video tracking and counting method (CropTriangulator) was proposed, which uses smartphone-captured videos to achieve row-based accurate counting based on oblique view and target density distribution. It integrates three core components: YOLOv11n was selected for its balanced detection accuracy and inference speed after model comparison; an adaptive DBSCAN (AdapDBSCAN) algorithm was designed to eliminate non-target seedlings by dynamically adjusting parameters to address perspective distortion; the SORT algorithm was adopted for tracking and counting, with permanent ID marking to ensure uniqueness when seedlings cross frame boundaries. Experiments on 20 test videos (10 for 45° oblique view, 10 for 90° vertical view) showed that CropTriangulator achieved an average counting accuracy of 97.13% at 45° (14% higher than 90°), with the R-squared of 45° row-based counts reaching 0.917. AdapDBSCAN reduced over-counting compared with fixed-parameter DBSCAN, and SORT had a much lower ID switch rate (8.47%) than DeepSORT (36.05%). The 45° oblique view is proven optimal for rapeseed seedling counting. The proposed CropTriangulator provides a low-cost and efficient solution for automated row-based counting in complex field environments, supporting precise yield estimation and scientific field management decisions. The video comparing the effects of the CropTriangulator method is available at: https://github.com/Possibility007/Comparison-of-counting-results.git

## Linked entities

- **Species:** Brassica napus (taxon 3708)

## Full-text entities

- **Chemicals:** DBSCAN (-)
- **Species:** Arachis hypogaea (goober, species) [taxon 3818], Brassica oleracea (wild cabbage, species) [taxon 3712], Brassica juncea (brown mustard, species) [taxon 3707], Brassica rapa (field mustard, species) [taxon 3711], Homo sapiens (human, species) [taxon 9606], Camellia oleifera (tea-oil Camellia, species) [taxon 385388], Brassica napus (oilseed rape, species) [taxon 3708], Beta vulgaris subsp. vulgaris (field beet, subspecies) [taxon 3555], Solanum lycopersicum (tomato, species) [taxon 4081]
- **Cell lines:** YOLOv11 — Homo sapiens (Human), Transformed cell line (CVCL_C1JD)

## Full text

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## Figures

15 figures with captions in the complete paper: https://tomesphere.com/paper/PMC12953452/full.md

## References

46 references — full list in the complete paper: https://tomesphere.com/paper/PMC12953452/full.md

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Source: https://tomesphere.com/paper/PMC12953452