TY - JOUR
T1 - AFC-RESNET18
T2 - A NOVEL REAL-TIME IMAGE SEMANTIC SEGMENTATION NETWORK FOR ORCHARD SCENE UNDERSTANDING
AU - Zhang, Jian
AU - Yang, Jingwei
AU - An, Ting
AU - Wu, Pengxin
AU - Ma, Chen
AU - Zhang, Cong
AU - Zhao, Ying
AU - Wang, Lihong
AU - Li, Chengsong
N1 - Publisher Copyright:
© 2024 American Society of Agricultural and Biological Engineers.
PY - 2024
Y1 - 2024
N2 - Semantic segmentation is a fundamental prerequisite for the real-time understanding of scenes. This understanding is essential for developing automated devices that can enhance productivity. Orchards, being labor-intensive and time-consuming workplaces, urgently require automated equipment to boost efficiency. Therefore, the objective of this article is to develop a real-time image semantic segmentation network tailored for orchard environments. This development aims to offer significant new insights into the design of automated maintenance and harvesting equipment. Based on ResNet, the 2015 classification champion network, a novel real-time image semantic segmentation network termed AFC-ResNet18, which used an attentional feature complementary module (AFC) to fuse RGB and depth image information, was designed and systematically tested. Interestingly, in the segmentation ability tests, the AFC-ResNet18 model outperformed the Swift- Net network in terms of segmentation depth. Surprisingly, in the architecture performance testing, the AFC-ResNet18 model achieved the highest accuracy. Noteworthily, in the orchard scene test, the AFC-ResNet18 model won first place with 72.5% accuracy. Predictably, these findings may accelerate the development of novel automated equipment to maintain the orchard worldwide, especially AFC-ResNet18 based robots.
AB - Semantic segmentation is a fundamental prerequisite for the real-time understanding of scenes. This understanding is essential for developing automated devices that can enhance productivity. Orchards, being labor-intensive and time-consuming workplaces, urgently require automated equipment to boost efficiency. Therefore, the objective of this article is to develop a real-time image semantic segmentation network tailored for orchard environments. This development aims to offer significant new insights into the design of automated maintenance and harvesting equipment. Based on ResNet, the 2015 classification champion network, a novel real-time image semantic segmentation network termed AFC-ResNet18, which used an attentional feature complementary module (AFC) to fuse RGB and depth image information, was designed and systematically tested. Interestingly, in the segmentation ability tests, the AFC-ResNet18 model outperformed the Swift- Net network in terms of segmentation depth. Surprisingly, in the architecture performance testing, the AFC-ResNet18 model achieved the highest accuracy. Noteworthily, in the orchard scene test, the AFC-ResNet18 model won first place with 72.5% accuracy. Predictably, these findings may accelerate the development of novel automated equipment to maintain the orchard worldwide, especially AFC-ResNet18 based robots.
KW - Attentional feature complementary module
KW - Orchard
KW - Real-time
KW - Robots
KW - Semantic segmentation
UR - http://www.scopus.com/inward/record.url?scp=85191400313&partnerID=8YFLogxK
U2 - 10.13031/ja.15682
DO - 10.13031/ja.15682
M3 - Article
AN - SCOPUS:85191400313
SN - 2769-3295
VL - 67
SP - 493
EP - 500
JO - Journal of the ASABE
JF - Journal of the ASABE
IS - 2
ER -