Figure 1.
Representative seedlings at the time of UAV survey. Top: Lens culinaris (left), A. artemisiifolia (right). Bottom: P. persicaria (left), P. aviculare (right). All at BBCH 10–14.
Figure 1.
Representative seedlings at the time of UAV survey. Top: Lens culinaris (left), A. artemisiifolia (right). Bottom: P. persicaria (left), P. aviculare (right). All at BBCH 10–14.
Figure 2.
Spatial distribution of sampling points for integrated data collection across the 3.40-hectare lentil field, including outside points measurements from drone imagery analysis (n=1,651), soil electrical conductivity measurements (blue points) at 75 cm and 150 cm depths using EM38-MK2 sensor (n=1,899 each), and NDVI grid samples from Sentinel-2 satellite imagery (n=200). The dark boundary line delineates the field perimeter used for spatial analysis and management zone delineation.
Figure 2.
Spatial distribution of sampling points for integrated data collection across the 3.40-hectare lentil field, including outside points measurements from drone imagery analysis (n=1,651), soil electrical conductivity measurements (blue points) at 75 cm and 150 cm depths using EM38-MK2 sensor (n=1,899 each), and NDVI grid samples from Sentinel-2 satellite imagery (n=200). The dark boundary line delineates the field perimeter used for spatial analysis and management zone delineation.
Figure 3.
Unified 5 by 5 m grid obtained from interpolated variables.
Figure 3.
Unified 5 by 5 m grid obtained from interpolated variables.
Figure 4.
YOLOv11 training performance across 50 epochs showing loss functions and evaluation metrics. Top row: training losses for bounding box regression (box_loss), classification (cls_loss), and distribution focal loss (dfl_loss), with corresponding validation losses below each. Bottom row: performance metrics including precision, recall, mean Average Precision at IoU threshold 0.5 (mAP50), and mAP at IoU thresholds 0.5:0.95 (mAP50-95). Blue lines represent actual values, while orange dotted lines indicate smoothed trends. The model achieved convergence by epoch 25 with stable performance metrics suitable for agricultural deployment.
Figure 4.
YOLOv11 training performance across 50 epochs showing loss functions and evaluation metrics. Top row: training losses for bounding box regression (box_loss), classification (cls_loss), and distribution focal loss (dfl_loss), with corresponding validation losses below each. Bottom row: performance metrics including precision, recall, mean Average Precision at IoU threshold 0.5 (mAP50), and mAP at IoU thresholds 0.5:0.95 (mAP50-95). Blue lines represent actual values, while orange dotted lines indicate smoothed trends. The model achieved convergence by epoch 25 with stable performance metrics suitable for agricultural deployment.
Figure 5.
F1-confidence curves for YOLOv11 model performance across target species. Individual curves show species-specific detection performance: LENCU (Lens culinaris, orange), AMBEL (Ambrosia artemisiifolia, blue), POLPE (Polygonum persicaria, red), and POLAV (P. aviculare, green). The thick blue line represents overall model performance across all classes, achieving an optimal F1-score of 0.82 at a confidence threshold of 0.339. Peak performance varies by species, with LENCU showing the highest discrimination capability (F1 = 0.87) and POLAV exhibiting reduced detection efficiency (F1 = 0.69), reflecting morphological and size differences among target classes.
Figure 5.
F1-confidence curves for YOLOv11 model performance across target species. Individual curves show species-specific detection performance: LENCU (Lens culinaris, orange), AMBEL (Ambrosia artemisiifolia, blue), POLPE (Polygonum persicaria, red), and POLAV (P. aviculare, green). The thick blue line represents overall model performance across all classes, achieving an optimal F1-score of 0.82 at a confidence threshold of 0.339. Peak performance varies by species, with LENCU showing the highest discrimination capability (F1 = 0.87) and POLAV exhibiting reduced detection efficiency (F1 = 0.69), reflecting morphological and size differences among target classes.
Figure 6.
Normalized confusion matrix for YOLOv11 species classification performance. The matrix shows true class labels (vertical axis) versus predicted classes (horizontal axis) with classification accuracies expressed as proportions. Diagonal elements represent correct classifications: LENCU (0.95), AMBEL (0.88), POLPE (0.85), and POLAV (0.73). Off-diagonal elements indicate misclassification patterns, with background confusion being the primary source of classification errors rather than inter-species confusion. Dark blue indicates high accuracy, while light blue represents lower classification rates.
Figure 6.
Normalized confusion matrix for YOLOv11 species classification performance. The matrix shows true class labels (vertical axis) versus predicted classes (horizontal axis) with classification accuracies expressed as proportions. Diagonal elements represent correct classifications: LENCU (0.95), AMBEL (0.88), POLPE (0.85), and POLAV (0.73). Off-diagonal elements indicate misclassification patterns, with background confusion being the primary source of classification errors rather than inter-species confusion. Dark blue indicates high accuracy, while light blue represents lower classification rates.
Figure 7.
Spatial distribution of drone image capture locations (red points) across the 3.42-hectare lentil field showing the systematic grid sampling pattern used for YOLOv11+SAHI model deployment. The grid-based approach ensured complete field coverage with 1,651 individual image captures, providing a comprehensive spatial representation for subsequent AI-based plant detection and geostatistical analysis integration.
Figure 7.
Spatial distribution of drone image capture locations (red points) across the 3.42-hectare lentil field showing the systematic grid sampling pattern used for YOLOv11+SAHI model deployment. The grid-based approach ensured complete field coverage with 1,651 individual image captures, providing a comprehensive spatial representation for subsequent AI-based plant detection and geostatistical analysis integration.
Figure 8.
YOLOv11+SAHI inference results showing species-specific detection performance in a representative field section with moderate to high weed density. Individual seedlings are detected with species-specific bounding boxes and confidence scores: magenta = AMBEL (Ambrosia artemisiifolia, 492 detections), blue = LENCU (Lens culinaris, 313 detections), orange = POLAV (P. aviculare, 1 detection), and yellow = POLPE (P. persicaria, 8 detections). Confidence scores (0.30-0.80 range) are displayed above each detection, demonstrating the model’s discriminative capability across varying plant sizes and orientations. The highlighted white rectangular area shows a zoomed region illustrating detection precision at individual seedling level, with successful identification of both crop and weed species in complex field conditions. Total plant count for this image section: 814 individual seedlings detected across four species.
Figure 8.
YOLOv11+SAHI inference results showing species-specific detection performance in a representative field section with moderate to high weed density. Individual seedlings are detected with species-specific bounding boxes and confidence scores: magenta = AMBEL (Ambrosia artemisiifolia, 492 detections), blue = LENCU (Lens culinaris, 313 detections), orange = POLAV (P. aviculare, 1 detection), and yellow = POLPE (P. persicaria, 8 detections). Confidence scores (0.30-0.80 range) are displayed above each detection, demonstrating the model’s discriminative capability across varying plant sizes and orientations. The highlighted white rectangular area shows a zoomed region illustrating detection precision at individual seedling level, with successful identification of both crop and weed species in complex field conditions. Total plant count for this image section: 814 individual seedlings detected across four species.
Figure 9.
YOLOv11+SAHI inference results in a low weed pressure scenario demonstrating accurate species-specific detection and crop-weed discrimination. Individual seedlings are detected with species-specific bounding boxes and confidence scores: blue = LENCU (\textit{Lens culinaris}, 39 detections), magenta = AMBEL (\textit{Ambrosia artemisiifolia}, 6 detections), yellow = POLPE (\textit{P. persicaria}, 1 detection), and orange = POLAV (\textit{P. aviculare}, 0 detections). High confidence scores (0.30-0.84 range) demonstrate reliable detection performance even under sparse plant density conditions. The clear soil background and well-spaced individual seedlings illustrate the framework’s capability to maintain detection accuracy in low-density scenarios typical of effective early-season weed management areas. Total plant count: 46 individual seedlings with a crop-to-weed ratio of 5.6:1, indicating successful crop establishment with minimal weed competition.
Figure 9.
YOLOv11+SAHI inference results in a low weed pressure scenario demonstrating accurate species-specific detection and crop-weed discrimination. Individual seedlings are detected with species-specific bounding boxes and confidence scores: blue = LENCU (\textit{Lens culinaris}, 39 detections), magenta = AMBEL (\textit{Ambrosia artemisiifolia}, 6 detections), yellow = POLPE (\textit{P. persicaria}, 1 detection), and orange = POLAV (\textit{P. aviculare}, 0 detections). High confidence scores (0.30-0.84 range) demonstrate reliable detection performance even under sparse plant density conditions. The clear soil background and well-spaced individual seedlings illustrate the framework’s capability to maintain detection accuracy in low-density scenarios typical of effective early-season weed management areas. Total plant count: 46 individual seedlings with a crop-to-weed ratio of 5.6:1, indicating successful crop establishment with minimal weed competition.
Figure 10.
Distribution plots for representative raw variables to be interpolated.
Figure 10.
Distribution plots for representative raw variables to be interpolated.
Figure 11.
Correlation matrix for the analyzed variables
Figure 11.
Correlation matrix for the analyzed variables
Figure 12.
Spatial distribution maps for Ambrosia artemisiifolia (AMBEL). (a) seedling density (plants per sqm); (b) Local Indicator of Spatial Association (LISA) (c) Moran’s I Index; (d) LISA significance map
Figure 12.
Spatial distribution maps for Ambrosia artemisiifolia (AMBEL). (a) seedling density (plants per sqm); (b) Local Indicator of Spatial Association (LISA) (c) Moran’s I Index; (d) LISA significance map
Figure 13.
Overlay map for AMBEL vs NDVI_14S, showing a strong positive co-location.
Figure 13.
Overlay map for AMBEL vs NDVI_14S, showing a strong positive co-location.
Figure 14.
Bivariate Local Indicators of Spatial Association (LISA) map showing co-location patterns between AMBEL density (plants m-2, represented by circles with brown color palette) and NDVI_14S values (background gradient in green to brown tones). The overlay reveals significant positive spatial associations between high weed density areas and vegetation vigor, indicating favorable microsites for Ambrosia artemisiifolia establishment.
Figure 14.
Bivariate Local Indicators of Spatial Association (LISA) map showing co-location patterns between AMBEL density (plants m-2, represented by circles with brown color palette) and NDVI_14S values (background gradient in green to brown tones). The overlay reveals significant positive spatial associations between high weed density areas and vegetation vigor, indicating favorable microsites for Ambrosia artemisiifolia establishment.
Figure 15.
Bivariate LISA analysis for AMBEL vs CE75, showing a moderate positive co-location
Figure 15.
Bivariate LISA analysis for AMBEL vs CE75, showing a moderate positive co-location
Figure 16.
Bivariate Local Indicators of Spatial Association (LISA) map showing co-location patterns between AMBEL density (plants m-2, represented by circles with brown color palette) and CE_75CM values (background gradient in yellow to blue tones). The overlay reveals moderate positive spatial associations between Ambrosia artemisiifolia density and shallow soil electrical conductivity, suggesting that areas with higher moisture retention and finer soil texture favor weed establishment.
Figure 16.
Bivariate Local Indicators of Spatial Association (LISA) map showing co-location patterns between AMBEL density (plants m-2, represented by circles with brown color palette) and CE_75CM values (background gradient in yellow to blue tones). The overlay reveals moderate positive spatial associations between Ambrosia artemisiifolia density and shallow soil electrical conductivity, suggesting that areas with higher moisture retention and finer soil texture favor weed establishment.
Figure 17.
Spatial analysis of weed community structure and competition patterns in the lentil field. (a) Dominant weed species distribution showing Ambrosia artemisiifolia (AMBEL) dominance across 1,331 grid points (96.8% of sampled area), with minimal Polygonum aviculare (POLAV) presence in 39 locations. (b) Weed competition zones using RGB color mixing to represent relative species proportions, where red intensity indicates AMBEL dominance, green represents POLPE presence, and blue shows POLAV distribution. Point size reflects total weed density per grid cell. (c) Weed-to-crop competition ratio interpolated surface, with green areas indicating crop dominance (low weed pressure), yellow zones showing balanced competition, and red regions representing high weed-to-crop ratios requiring intensive management. (d) Community cluster analysis revealing four distinct management zones based on species composition and density patterns, with Zone 1 (purple) showing highest AMBEL pressure (431.0 plants m-2), Zones 2–4 exhibiting moderate to low weed densities, and Zone 3 (teal) representing areas with significant POLPE co-occurrence (113.4 plants m-2).
Figure 17.
Spatial analysis of weed community structure and competition patterns in the lentil field. (a) Dominant weed species distribution showing Ambrosia artemisiifolia (AMBEL) dominance across 1,331 grid points (96.8% of sampled area), with minimal Polygonum aviculare (POLAV) presence in 39 locations. (b) Weed competition zones using RGB color mixing to represent relative species proportions, where red intensity indicates AMBEL dominance, green represents POLPE presence, and blue shows POLAV distribution. Point size reflects total weed density per grid cell. (c) Weed-to-crop competition ratio interpolated surface, with green areas indicating crop dominance (low weed pressure), yellow zones showing balanced competition, and red regions representing high weed-to-crop ratios requiring intensive management. (d) Community cluster analysis revealing four distinct management zones based on species composition and density patterns, with Zone 1 (purple) showing highest AMBEL pressure (431.0 plants m-2), Zones 2–4 exhibiting moderate to low weed densities, and Zone 3 (teal) representing areas with significant POLPE co-occurrence (113.4 plants m-2).

Table 1.
Climatic characteristics of the experimental site during the first eight years of crop rotation development.
Table 1.
Climatic characteristics of the experimental site during the first eight years of crop rotation development.
| Season |
Mean Temperature (°C) |
Precipitation (mm) |
Evaporation (mm) |
| 2016 |
12.8 |
605 |
1023 |
| 2017 |
13.2 |
563 |
1041 |
| 2018 |
13.5 |
730 |
990 |
| 2019 |
13.4 |
632 |
994 |
| 2020 |
13.6 |
746 |
1077 |
| 2021 |
13.5 |
649 |
940 |
| 2022 |
13.2 |
920 |
966 |
| 2023 |
13.7 |
1209 |
925 |
Table 2.
Physical and hydric soil properties at the experimental site.
Table 2.
Physical and hydric soil properties at the experimental site.
| Parameter |
Value |
| Clay, % |
16.7 |
| Silt, % |
44.6 |
| Sand, % |
38.7 |
| Bulk density, g cm−3
|
1.00 |
| pH (soil:water 1:5) |
5.52 |
| Electrical conductivity, EC (dS m−1) |
0.11 |
Table 3.
Morphological characteristics of crop and weed seedlings during early development (BBCH 10–14).
Table 3.
Morphological characteristics of crop and weed seedlings during early development (BBCH 10–14).
| Species (EPPO) |
BBCH Stage |
Cotyledon Shape |
First True Leaves |
|
L. culinaris (Crop) |
12–14 |
Hypogeal (not visible) |
Pinnate, pubescent |
|
A. artemisiifolia (AMBEL) |
10–14 |
Spatulate, opposite |
Deeply lobed, pubescent |
|
P. persicaria (POLPE) |
10–12 |
Lanceolate, narrow |
Ovate, reddish midrib |
|
P. aviculare (POLAV) |
10–12 |
Linear-elliptical |
Oblong, alternate |
Table 4.
Camera specifications and acquisition parameters for training dataset development.
Table 4.
Camera specifications and acquisition parameters for training dataset development.
| Parameter |
Specification |
| Sensor |
APS-C CMOS (22.3 × 14.9 mm) |
| Resolution |
18.0 MP (5184 × 3456 pixels) |
| Focal length |
18–55 mm (equivalent to 29–88 mm in 35mm format) |
| Aperture range |
f/3.5–5.6 |
| ISO sensitivity |
100–400 (optimal conditions) |
| Shutter speed |
1/250–1/500 s |
| Image format |
JPEG (Fine quality, sRGB color space) |
| Shooting height |
1.2 ± 0.1 m above crop canopy |
| Ground sampling distance |
0.48 ± 0.05 mm pixel−1
|
Table 5.
Descriptive statistics for weed densities, soil properties, and vegetation indices in the lentil field study area.
Table 5.
Descriptive statistics for weed densities, soil properties, and vegetation indices in the lentil field study area.
| Variable |
N |
Mean |
SD |
CV |
Min |
Max |
Skewness |
| Weed Densities (plants m-2) |
| AMBEL1
|
1651 |
66.46 |
69.20 |
1.04 |
0.00 |
262.01 |
1.02 |
| LENCU2
|
1651 |
39.29 |
27.98 |
0.71 |
0.00 |
209.12 |
1.65 |
| POLPE3
|
1651 |
2.83 |
9.04 |
3.20 |
0.00 |
141.34 |
8.05 |
| POLAV4
|
1651 |
4.32 |
3.88 |
0.90 |
0.00 |
37.69 |
2.26 |
| Total weeds |
1651 |
113.09 |
90.41 |
0.80 |
0.00 |
314.29 |
0.80 |
| Soil Properties |
| CE_75CM (mS m-1) |
1608 |
14.35 |
1.91 |
0.13 |
9.57 |
20.51 |
0.24 |
| CE_150CM (mS m-1) |
1608 |
14.78 |
1.31 |
0.09 |
10.90 |
20.70 |
0.98 |
| Vegetation Indices |
| NDVI_14S |
1370 |
0.250 |
0.047 |
0.19 |
0.163 |
0.398 |
0.50 |
| NDVI_24S |
1370 |
0.281 |
0.088 |
0.31 |
0.159 |
0.491 |
0.63 |
| NDVI_diff |
1370 |
0.031 |
0.045 |
1.43 |
-0.044 |
0.168 |
0.61 |
Table 6.
Semivariogram model parameters and spatial dependence characteristics for interpolated variables.
Table 6.
Semivariogram model parameters and spatial dependence characteristics for interpolated variables.
| Variable |
Model |
Nugget |
Sill |
Range (m) |
Nugget/Sill |
Spatial Dependence |
AIC |
| CE_75 |
Exponential |
0.85 |
2.94 |
45.2 |
0.29 |
Moderate |
-1847.3 |
| CE_150 |
Exponential |
0.32 |
1.48 |
52.8 |
0.22 |
Strong |
-2156.8 |
| NDVI_14S |
Spherical |
0.00 |
0.0022 |
38.7 |
0.00 |
Very Strong |
-4821.2 |
| NDVI_24S |
Spherical |
0.15 |
0.0075 |
41.3 |
0.02 |
Very Strong |
-3642.1 |
| LENCU |
Spherical |
185.2 |
502.3 |
35.4 |
0.37 |
Moderate |
12847.9 |
| Sum_weeds |
Spherical |
1456.8 |
8156.2 |
42.8 |
0.18 |
Strong |
15234.7 |
| POLPE |
Exponential |
23.1 |
40.4 |
28.9 |
0.57 |
Weak |
9876.4 |
| POLAV |
Gaussian |
4.8 |
5.2 |
19.3 |
0.92 |
Very Weak |
6543.2 |
Table 7.
Leave-one-out cross-validation results for ordinary kriging interpolation of environmental and biological variables.
Table 7.
Leave-one-out cross-validation results for ordinary kriging interpolation of environmental and biological variables.
| Variable |
RMSE |
R² |
Slope |
Intercept |
Units |
Performance |
|
0.006 |
0.996 |
1.011 |
-0.003 |
– |
Excellent |
|
0.516 |
0.923 |
0.995 |
0.070 |
mS m-1
|
Excellent |
|
0.447 |
0.862 |
1.029 |
-0.422 |
mS m-1
|
Very Good |
|
39.593 |
0.810 |
1.052 |
-5.971 |
plants m-2
|
Very Good |
| AMBEL |
32.529 |
0.782 |
1.065 |
-4.264 |
plants m-2
|
Good |
| LENCU |
17.506 |
0.609 |
1.033 |
-1.378 |
plants m-2
|
Good |
| POLPE |
6.359 |
0.509 |
1.082 |
-0.185 |
plants m-2
|
Moderate |
| POLAV |
3.037 |
0.390 |
1.067 |
-0.304 |
plants m-2
|
Poor |
Table 8.
Global and local spatial autocorrelation results for key variables using distance-based spatial weights (30 m threshold).
Table 8.
Global and local spatial autocorrelation results for key variables using distance-based spatial weights (30 m threshold).
| Variable |
Global Moran’s I |
p-value |
Significant Clusters |
Coverage (%) |
Primary Cluster Type |
| NDVI_24S |
0.795 |
<0.001 |
925 |
67.5 |
Low-Low (39.9%) |
| NDVI_14S |
0.745 |
<0.001 |
798 |
58.2 |
Low-Low (31.5%) |
| Diff_NDVI |
0.764 |
<0.001 |
972 |
70.9 |
Low-Low (42.0%) |
| LENCU |
0.770 |
<0.001 |
831 |
60.7 |
Low-Low (35.8%) |
| AMBEL |
0.667 |
<0.001 |
992 |
72.4 |
Low-Low (43.2%) |
| CE_150 |
0.591 |
<0.001 |
806 |
58.8 |
Low-Low (35.9%) |
| CE_75 |
0.452 |
<0.001 |
674 |
49.2 |
Low-Low (27.4%) |
| POLPE |
0.518 |
<0.001 |
809 |
59.1 |
Low-Low (50.1%) |
| POLAV |
0.289 |
<0.001 |
652 |
47.6 |
Low-Low (27.8%) |
Table 9.
Bivariate Local Indicators of Spatial Association (LISA) results for key variable pairs.
Table 9.
Bivariate Local Indicators of Spatial Association (LISA) results for key variable pairs.
| Variable Pair |
Global r |
Spatial r |
Significant (%) |
Positive |
Negative |
| AMBEL ↔ NDVI_14S |
0.831 |
0.818 |
86.4 |
1086 |
98 |
| LENCU ↔ NDVI_14S |
0.837 |
0.871 |
86.3 |
1082 |
100 |
| Total_Weeds ↔ NDVI_14S |
0.846 |
0.837 |
86.3 |
1083 |
99 |
| AMBEL ↔ LENCU |
0.784 |
0.759 |
87.6 |
1086 |
114 |
| POLPE ↔ LENCU |
0.608 |
0.621 |
87.7 |
1015 |
186 |
| CE_75 ↔ Diff_NDVI |
0.542 |
0.515 |
90.4 |
864 |
374 |
| CE_150 ↔ NDVI_24S |
0.536 |
0.513 |
89.6 |
811 |
417 |
| AMBEL ↔ CE_75 |
0.513 |
0.633 |
74.3 |
845 |
173 |
| POLPE ↔ CE_150 |
0.584 |
0.650 |
74.9 |
806 |
220 |
| CWR ↔ NDVI_14S |
-0.611 |
-0.593 |
86.7 |
280 |
908 |
Table 10.
Species-based management zone characteristics derived from fuzzy clustering analysis.
Table 10.
Species-based management zone characteristics derived from fuzzy clustering analysis.
| Zone |
Area (ha) |
Points (n) |
Priority |
Membership |
| Zone 1 |
0.70 |
280 |
Medium |
0.76 |
| Zone 2 |
1.00 |
400 |
Critical |
0.82 |
| Zone 3 |
0.09 |
36 |
Critical |
0.68 |
| Zone 4 |
1.63 |
654 |
Low |
0.87 |