This paper proposes a novel pixel interval down-sampling network (PID-Net) for dense tiny object (yeast cells) counting tasks with higher accuracy. The PID-Net is an end-to-end convolutional neural network (CNN) model with an encoder--decoder architecture. The pixel interval down-sampling operations are concatenated with max-pooling operations to combine the sparse and dense features. This addresses the limitation of contour conglutination of dense objects while counting. The evaluation was conducted using classical segmentation metrics (the Dice, Jaccard and Hausdorff distance) as well as counting metrics. The experimental results show that the proposed PID-Net had the best performance and potential for dense tiny object counting tasks, which achieved 96.97\% counting accuracy on the dataset with 2448 yeast cell images. By comparing with the state-of-the-art approaches, such as Attention U-Net, Swin U-Net and Trans U-Net, the proposed PID-Net can segment dense tiny objects with clearer boundaries and fewer incorrect debris, which shows the great potential of PID-Net in the task of accurate counting.
翻译:本文建议为密度小对象( 酵母细胞) 计数任务建立一个新型像素间隔下取样网络( PID- Net) 。 PID- Net 是一个端到端的共振神经网络模型, 带有编码器- 解码器结构。 像素间隔下取样操作与最大集合操作相融合, 以结合稀薄和稠密的特性。 这解决了在计算时对密度大对象的等离子相融合的限制。 评估是使用古典分化测量测量仪( Dice、 Jaccard 和 Hausdorf 距离) 以及计数测量仪进行的。 实验结果显示, 拟议的PID- Net 具有密度小对象计算任务的最佳性能和潜力, 其中实现了96. 997 ⁇ , 以2448 酵母细胞图像计算数据集的准确性能。 与状态技术方法相比, 如注意 U- Net、 Swin U- Net 和 Trans U- Net, 拟议的PID- Net Net 能够以更清晰的边界和不准确的碎片计数数任务的巨大潜力。