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中文
China Cotton
Figure/Table detail
Research on posture and grade recognition of cotton and its localization using improved YOLOX
Xie Jia, Chen Xuefei, Li Yongguo, Jin Changbing, Liang Jintao, Sun Shuaihao
Cotton Science
, 2024, 36(
4
): 328-339. DOI:
10.11963/cs20240016
Fig. 1
Equipment for field experiment
Other figure/table from this article
Table 1
Image source for the dataset
Table 2
Class distribution of training set and test set images
Fig. 2
Technology roadmap
Fig. 3
Recognition module network structure in this study
Focus is the slicing operation module for the input image; C3 is the concentrated comprehensive convolution block; CBS is the convolution unit; Concat indicates feature stitching; Upsample is feature upsampling; Detect is the detection module; Dark is DarkNet, and Dark+CA is the CA module added after the Dark module.
Fig. 4
The structure of CA module
C
denotes the depth of the feature channel;
H
and
W
denote the height and width of the feature;
r
is the indentation ratio;
X
Avg Pool denotes horizontal global pooling;
Y
Avg Pool denotes vertical global pooling; Conv2d denotes convolutional 2D; BN denotes batch normalization; Sigmoid is an activation function
Fig. 5
Prediction box and ground truth box of the model
$b_{c_{x}}^{g t}$, $b_{c_{y}}^{g t}$ are the coordinates of the center point
B
gt
of the real box (ground truth box), and $b_{c_{x}}$, $b_{c_{y}}$ are the coordinates of the center point
B
of the prediction box;
h
and
w
are the length and width of the prediction box, and
h
gt
,
w
gt
are the length and width of the real box; σ is the straight line distance between the point
B
gt
and the point
B
;
c
h
and
c
w
are the distance between the center point of the two boxes in the vertical direction and the distance in the horizontal direction;
c
h
and
c
w
are the height and width of the smallest outer rectangle of the real box and the prediction box;
α
is the angle between the center point of the real box and the center point of the prediction box in the horizontal direction.
Fig. 6
The central point of the prediction box
Point P is the central point of the prediction box. The red box is the prediction box. Cotton_Top is the predicted category, where it represents positive normal cotton. 1.0 is the confidence level.
Fig. 7
Schematic diagram of the disparity calculation
The figure uses two directional axes,
Z
and
X
;
O
left
and
O
right
are the left and right camera optical centers, respectively;
P
is the positioning point on the object to be measured;
P
left
and
P
right
are the imaging points of the positioning point
P
on the left and right camera optical sensors, respectively;
x
left
and
x
right
are the distances of
P
left
and
P
right
from the optical axis of the left and right cameras, respectively;
f
is the camera focal length;
b
is the distance between the centers of the two cameras;
x
is the coordinate of point
P
on the
X
-axis; Baseline is the line connecting the optical centers of the left and right cameras.
Fig. 8
Training loss function for different models
Table 3
Results of ablation study
Table 4
The training results of different models
Fig. 9
Identification test results for different cotton types (A) and cover conditions (B)
Cotton_Side represents the side cotton identified based on the YOLOX-Cotton model; Cotton_Top represents the positive normal cotton; CottonLow_Top represents the positive low-grade cotton.
Fig. 10
Field cotton category recognition results based on YOLOX-Cotton
Cotton_Side represents the side cotton identified based on YOLOX-Cotton model; Cotton_Top represents the positive normal cotton; CottonLow_Top represents the positive side of low-grade cotton. The number at the end of the cotton grade represents confidence.
Table 5
Field verification results of cotton location depth of YOLOX-Cotton model