Spatio-Temporal Behavior Detection in Field Manual Labor Based on Improved SlowFast Architecture

Author:

Zou Mingxin1,Zhou Yanqing12,Jiang Xinhua12,Gao Julin3,Yu Xiaofang3,Ma Xuelei12

Affiliation:

1. School of Computer and Information Engineering, Inner Mongolia Agricultural University, Hohhot 010011, China

2. Inner Mongolia Autonomous Region Key Laboratory of Big Data Research and Application of Agriculture and Animal Husbandry, Hohhot 750306, China

3. School of Agriculture, Inner Mongolia Agricultural University, Hohhot 010019, China

Abstract

Field manual labor behavior recognition is an important task that applies deep learning algorithms to industrial equipment for capturing and analyzing people’s behavior during field labor. In this study, we propose a field manual labor behavior recognition network based on an enhanced SlowFast architecture. The main work includes the following aspects: first, we constructed a field manual labor behavior dataset containing 433,500 fast-track frames and 8670 key frames based on the captured video data, and labeled it in detail; this includes 9832 labeled frames. This dataset provides a solid foundation for subsequent studies. Second, we improved the slow branch of the SlowFast network by introducing the combined CA (Channel Attention) attention module. Third, we enhanced the fast branch of the SlowFast network by introducing the ACTION hybrid attention module. The experimental results show that the recognition accuracy of the improved SlowFast network model with the integration of the two attention modules increases by 7.08%. This implies that the improved network model can more accurately locate and identify manual labor behavior in the field, providing a more effective method for problem solving.

Funder

National Natural Science Foundation of China

Science and Technology Major of Inner Mongolia Autonomous Region of China

Natural Science Foundation of Inner Mongolia Autonomous Region of China

Publisher

MDPI AG

Reference40 articles.

1. Implementation of artificial intelligence in agriculture;Sharma;J. Comput. Cogn. Eng.,2023

2. Huang, T., and Xiong, B. (2022). Space comparison of agricultural green growth in agricultural modernization: Scale and quality. Agriculture, 12.

3. An adaptive vision navigation algorithm in agricultural IoT system for smart agricultural robots;Zhang;Comput. Mater. Contin.,2021

4. Rough sets based Ordinal Priority Approach to evaluate sustainable development goals (SDGs) for sustainable mining;Deveci;Resour. Policy,2022

5. IoT in Agriculture: The Future of Precision Monitoring and Data-Driven Farming;Liang;Eig. Rev. Sci. Technol.,2023

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