LCU-Net: A novel low-cost U-Net for environmental microorganism image segmentation
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Tao Jiang | Kimiaki Shirahama | Marcin Grzegorzek | Chen Li | Jinghua Zhang | Sergey Kosov | Changhao Sun | Zihan Li | Hong Li | Tao Jiang | Chen Li | M. Grzegorzek | Kimiaki Shirahama | Jinghua Zhang | Changhao Sun | Zihan Li | S. Kosov | Hong Li | Zihan Li
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