2024
DOI: 10.1016/j.imavis.2024.105057
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ASF-YOLO: A novel YOLO model with attentional scale sequence fusion for cell instance segmentation

Ming Kang,
Chee-Ming Ting,
Fung Fung Ting
et al.
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Cited by 60 publications
(3 citation statements)
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“…However, various feature pyramid network structures fail to effectively exploit the correlation among all pyramid feature maps, which may lead to a decrease in model accuracy. The SSFF [27] module utilizes a novel scale sequence feature fusion method, which can better integrate the high-dimensional information of deep feature maps with the detailed information of shallow feature maps. During the image downsampling process, the size of the image changes, but the scale-invariant features remain unchanged.…”
Section: Ssff Modulementioning
confidence: 99%
“…However, various feature pyramid network structures fail to effectively exploit the correlation among all pyramid feature maps, which may lead to a decrease in model accuracy. The SSFF [27] module utilizes a novel scale sequence feature fusion method, which can better integrate the high-dimensional information of deep feature maps with the detailed information of shallow feature maps. During the image downsampling process, the size of the image changes, but the scale-invariant features remain unchanged.…”
Section: Ssff Modulementioning
confidence: 99%
“…The resulting AIFI-HiLo module captures both local details and global dependencies in feature maps. Subsequently, the proposed slimneck-SSFF structure for feature fusion, which combines a scaled sequence feature fusion framework [33] with a slim neck design, employs GSConv and VoVGSCSP modules [34] to reduce computational costs and inference latency, enhancing the focus on small target features. Finally, Inner-IoU [35] is combined with GIoU [36] to form Inner-GIoU, using a scale factor ratio to control the auxiliary bounding box size for loss computation in order to accelerate convergence and improve the detection of extremely small targets.…”
Section: The Phsi-rtdetr Model Architecturementioning
confidence: 99%
“…The enhancement of the Head component is attained through the implementation of Attentional Scale Sequence Fusion (ASF) in ASF-YOLO, along with the integration of the P2 detection layer and optimization of the network architecture. ASF-YOLO (depicted in Figure 4 ) represents a novel YOLO framework introduced by Ming Kang [ 25 ], amalgamating spatial and scale features to achieve precise and rapid cell instance segmentation. This framework extends the Yolo segmentation model, incorporating the Scale Sequence Feature Fusion (SSFF) module to bolster the network’s multi-scale information extraction capacity and the Triple Feature Encoder (TFE) module to fuse feature maps across various scales for detailed information augmentation.…”
Section: Yolov8n-fads Detection Modelmentioning
confidence: 99%