Boosting Cost-Efficiency in Robotics: A Distributed Computing Approach for Harvesting Robots
文献类型: 外文期刊
第一作者: Xie, Feng
作者: Xie, Feng;Xie, Feng;Li, Tao;Feng, Qingchun;Li, Tao;Feng, Qingchun;Chen, Liping;Zhao, Chunjiang;Zhao, Hui
作者机构:
关键词: 5G network; computation allocation; edge computing; harvesting robot; visual system
期刊名称:JOURNAL OF FIELD ROBOTICS ( 影响因子:5.2; 五年影响因子:7.5 )
ISSN: 1556-4959
年卷期: 2025 年 42 卷 5 期
页码:
收录情况: SCI
摘要: Multi-arm harvesting robots offer a promising solution to the labor shortage in fruit harvesting, due to their ability to improve harvesting efficiency. However, multi-arm harvesters necessitate additional visual sensors to acquire distribution information of fruits within larger working spaces. Greater demands are consequently imposed on graphics computation, leading to increased costs in computing hardware of robot system. To balance the graphics computing cost and reduce energy consumption, distributed graphics computation frameworks for multi-arm robot vision system are proposed in this study. First, a host-edge framework is proposed to assign the tasks of image inference and depth alignment to host computer and edge computing modules through a decentralized mode of local connection. Moreover, to increase the endurance time of robot in application, the edge computing modules are reduced and the fifth generation mobile communication is integrated into robot graphics computing system to transfer on-board image processing to a remote computing server with MQTT protocol. To verify the effectiveness of the proposed framework, comprehensive experiments were performed, demonstrating that, compared with traditional computing framework, the proposed local distributed framework reduced 35.6% average time consumption, and over 20 FPS average processing speed can be achieve. The remote distributed framework has reduced the computational power consumption of the on-board system by approximately 23.1% while ensuring the performance is not lower than the local distributed framework. Finally, by discussing the two frameworks in terms of stability and cost, we present the commercial viability for the application of multi-arm harvesting robot.
分类号:
- 相关文献
作者其他论文 更多>>
-
Recognition of maize seedling under weed disturbance using improved YOLOv5 algorithm
作者:Tang, Boyi;Zhao, Chunjiang;Tang, Boyi;Zhou, Jingping;Pan, Yuchun;Qu, Xuzhou;Cui, Yanglin;Liu, Chang;Li, Xuguang;Zhao, Chunjiang;Gu, Xiaohe;Li, Xuguang
关键词:Object detection; Maize seedlings; UAV RGB images; YOLOv5; Attention mechanism
-
Genotyping Identification of Maize Based on Three-Dimensional Structural Phenotyping and Gaussian Fuzzy Clustering
作者:Xu, Bo;Zhao, Chunjiang;Xu, Bo;Zhao, Chunjiang;Yang, Guijun;Zhang, Yuan;Liu, Changbin;Feng, Haikuan;Yang, Xiaodong;Yang, Hao;Xu, Bo;Zhao, Chunjiang;Yang, Guijun;Zhang, Yuan;Liu, Changbin;Feng, Haikuan;Yang, Xiaodong;Yang, Hao
关键词:tassel; 3D phenotyping; TreeQSM; genotyping; clustering
-
TMVF: Trusted Multi-View Fish Behavior Recognition with correlative feature and adaptive evidence fusion
作者:Zhao, Zhenxi;Yan, Xinting;Zhao, Chunjiang;Zhou, Chao;Zhao, Zhenxi;Yan, Xinting;Zhao, Chunjiang;Zhou, Chao;Zhao, Zhenxi;Yan, Xinting;Zhao, Chunjiang;Zhou, Chao;Zhao, Zhenxi
关键词:Multi-source domain feature evidence vector; fusion; Trusted deep multi-view learning; Fish behavior recognition; Fish Behavior Recognition Dataset; Associative cross-fusion
-
Adaptive visual servoing control for uncalibrated robot manipulator with uncertain dead-zone constraint
作者:Ma, YA-Jun;Ma, YA-Jun;Zhao, Hui;Li, Tao
关键词:Adaptive control; robot manipulator; visual servoing; unknown dead-zone inputs; projecting algorithm
-
Quantifying the Photosynthetic Quantum Yield of Ultraviolet-A1 Radiation
作者:Sun, Xuguang;Zhang, Yuqi;Li, Tao;Sun, Xuguang;Kaiser, Elias;Marcelis, Leo F. M.
关键词:chlorophyll fluorescence; photoinhibition; photosynthesis; photosynthetic quantum yield; UV-A1
-
An Improved iTransformer with RevIN and SSA for Greenhouse Soil Temperature Prediction
作者:Wang, Fahai;Wang, Yiqun;Chen, Wenbai;Zhao, Chunjiang
关键词:time-series prediction; iTransformer; singular spectrum analysis; reversible instance normalization; greenhouse control
-
High-throughput phenotyping techniques for forage: Status, bottleneck, and challenges
作者:Cheng, Tao;Zhang, Dongyan;Cheng, Tao;Wang, Zhaoming;Zhang, Dongyan;Zhang, Gan;Yuan, Feng;Liu, Yaling;Wang, Tianyi;Ren, Weibo;Zhao, Chunjiang
关键词:Forage; High-throughput phenotyping; Precision identification; Sensors; Artificial intelligence; Efficient breeding