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CaraNet: Context Axial Reverse Attention Network for Segmentation of Small Medical Objects

About

Segmenting medical images accurately and reliably is important for disease diagnosis and treatment. It is a challenging task because of the wide variety of objects' sizes, shapes, and scanning modalities. Recently, many convolutional neural networks (CNN) have been designed for segmentation tasks and achieved great success. Few studies, however, have fully considered the sizes of objects, and thus most demonstrate poor performance for small objects segmentation. This can have a significant impact on the early detection of diseases. This paper proposes a Context Axial Reserve Attention Network (CaraNet) to improve the segmentation performance on small objects compared with several recent state-of-the-art models. We test our CaraNet on brain tumor (BraTS 2018) and polyp (Kvasir-SEG, CVC-ColonDB, CVC-ClinicDB, CVC-300, and ETIS-LaribPolypDB) segmentation datasets. Our CaraNet achieves the top-rank mean Dice segmentation accuracy, and results show a distinct advantage of CaraNet in the segmentation of small medical objects.

Ange Lou, Shuyue Guan, Hanseok Ko, Murray Loew• 2021

Related benchmarks

TaskDatasetResultRank
Polyp SegmentationCVC-ClinicDB (test)
DSC93.6
196
Polyp SegmentationKvasir
Dice Score91.8
128
Polyp SegmentationETIS
Dice Score74.7
108
Polyp SegmentationETIS (test)
Mean Dice74.7
86
Polyp SegmentationCVC-ClinicDB
Dice Coefficient93.6
81
Polyp SegmentationColonDB
mDice77.3
74
Skin Lesion SegmentationISIC 2018 (test)
Dice Score87
74
Polyp SegmentationKvasir (test)
Dice Coefficient91.8
73
Polyp SegmentationCVC-ColonDB
mDice77.3
66
Polyp SegmentationCVC-ColonDB (test)
Mean Dice0.773
62
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