College of Electronic Engineering (College of Artificial Intelligence), South China Agricultural University, Guangzhou 510642, China.
Guangdong Laboratory for Lingnan Modern Agriculture, Guangzhou 510642, China.
Sensors (Basel). 2022 Feb 7;22(3):1255. doi: 10.3390/s22031255.
Florescence information monitoring is essential for strengthening orchard management activities, such as flower thinning, fruit protection, and pest control. A lightweight object recognition model using cascade fusion YOLOv4-CF is proposed, which recognizes multi-type objects in their natural environments, such as citrus buds, citrus flowers, and gray mold. The proposed model has an excellent representation capability with an improved cascade fusion network and a multi-scale feature fusion block. Moreover, separable deep convolution blocks were employed to enhance object feature information and reduce model computation. Further, channel shuffling was used to address missing recognition in the dense distribution of object groups. Finally, an embedded sensing system for recognizing citrus flowers was designed by quantitatively applying the proposed YOLOv4-CF model to an FPGA platform. The mAP@.5 of citrus buds, citrus flowers, and gray mold obtained on the server using the proposed YOLOv4-CF model was 95.03%, and the model size of YOLOv4-CF + FPGA was 5.96 MB, which was 74.57% less than the YOLOv4-CF model. The FPGA side had a frame rate of 30 FPS; thus, the embedded sensing system could meet the demands of florescence information in real-time monitoring.
花果信息监测对加强果园管理活动(如花序疏除、果实保护和病虫害防治)至关重要。提出了一种基于级联融合 YOLOv4-CF 的轻量级目标识别模型,可识别柑橘花蕾、柑橘花和灰霉病等自然环境中的多类型目标。所提出的模型具有改进的级联融合网络和多尺度特征融合块,具有出色的表示能力。此外,采用可分离深度卷积块来增强目标特征信息并减少模型计算量。进一步,使用通道洗牌来解决对象组密集分布中的漏识别问题。最后,通过将所提出的 YOLOv4-CF 模型定量应用于 FPGA 平台,设计了用于识别柑橘花的嵌入式感测系统。在所提出的 YOLOv4-CF 模型服务器上,柑橘花蕾、柑橘花和灰霉病的 mAP@.5 分别为 95.03%,YOLOv4-CF+FPGA 的模型大小为 5.96MB,比 YOLOv4-CF 模型小 74.57%。FPGA 端的帧率为 30FPS;因此,嵌入式感测系统能够满足实时监测花果信息的需求。