Plant Methods (Jan 2023)

YOLO POD: a fast and accurate multi-task model for dense Soybean Pod counting

  • Shuai Xiang,
  • Siyu Wang,
  • Mei Xu,
  • Wenyan Wang,
  • Weiguo Liu

DOI
https://doi.org/10.1186/s13007-023-00985-4
Journal volume & issue
Vol. 19, no. 1
pp. 1 – 11

Abstract

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Abstract Background The number of soybean pods is one of the most important indicators of soybean yield, pod counting is crucial for yield estimation, cultivation management, and variety breeding. Counting pods manually is slow and laborious. For crop counting, using object detection network is a common practice, but the scattered and overlapped pods make the detection and counting of the pods difficult. Results We propose an approach that we named YOLO POD, based on the YOLO X framework. On top of YOLO X, we added a block for predicting the number of pods, modified the loss function, thus constructing a multi-task model, and introduced the Convolutional Block Attention Module (CBAM). We achieve accurate identification and counting of pods without reducing the speed of inference. The results showed that the R2 between the number predicted by YOLO POD and the ground truth reached 0.967, which is improved by 0.049 compared to YOLO X, while the inference time only increased by 0.08 s. Moreover, MAE, MAPE, RMSE are only 4.18, 10.0%, 6.48 respectively, the deviation is very small. Conclusions We have achieved the first accurate counting of soybean pods and proposed a new solution for the detection and counting of dense objects.

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