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Real-Time Prediction of Growth Characteristics for Individual Fruits Using Deep Learning
by
Hondo, Takaya
, Aoyagi, Yuya
, Kobayashi, Kazuki
in
Accuracy
/ Apples
/ automatic generation data
/ Cameras
/ Datasets
/ Deep learning
/ Farms
/ Fruit
/ Fruits
/ Growth
/ growth prediction
/ Identification systems
/ Image processing
/ individual identification
/ Machine learning
/ Measurement
/ Methods
/ Monitoring systems
/ Observations
/ Orchards
/ Technology application
2022
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Real-Time Prediction of Growth Characteristics for Individual Fruits Using Deep Learning
by
Hondo, Takaya
, Aoyagi, Yuya
, Kobayashi, Kazuki
in
Accuracy
/ Apples
/ automatic generation data
/ Cameras
/ Datasets
/ Deep learning
/ Farms
/ Fruit
/ Fruits
/ Growth
/ growth prediction
/ Identification systems
/ Image processing
/ individual identification
/ Machine learning
/ Measurement
/ Methods
/ Monitoring systems
/ Observations
/ Orchards
/ Technology application
2022
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Do you wish to request the book?
Real-Time Prediction of Growth Characteristics for Individual Fruits Using Deep Learning
by
Hondo, Takaya
, Aoyagi, Yuya
, Kobayashi, Kazuki
in
Accuracy
/ Apples
/ automatic generation data
/ Cameras
/ Datasets
/ Deep learning
/ Farms
/ Fruit
/ Fruits
/ Growth
/ growth prediction
/ Identification systems
/ Image processing
/ individual identification
/ Machine learning
/ Measurement
/ Methods
/ Monitoring systems
/ Observations
/ Orchards
/ Technology application
2022
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Real-Time Prediction of Growth Characteristics for Individual Fruits Using Deep Learning
Journal Article
Real-Time Prediction of Growth Characteristics for Individual Fruits Using Deep Learning
2022
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Overview
Understanding the growth status of fruits can enable precise growth management and improve the product quality. Previous studies have rarely used deep learning to observe changes over time, and manual annotation is required to detect hidden regions of fruit. Thus, additional research is required for automatic annotation and tracking fruit changes over time. We propose a system to record the growth characteristics of individual apples in real time using Mask R-CNN. To accurately detect fruit regions hidden behind leaves and other fruits, we developed a region detection model by automatically generating 3000 composite orchard images using cropped images of leaves and fruits. The effectiveness of the proposed method was verified on a total of 1417 orchard images obtained from the monitoring system, tracking the size of fruits in the images. The mean absolute percentage error between the true value manually annotated from the images and detection value provided by the proposed method was less than 0.079, suggesting that the proposed method could extract fruit sizes in real time with high accuracy. Moreover, each prediction could capture a relative growth curve that closely matched the actual curve after approximately 150 elapsed days, even if a target fruit was partially hidden.
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