2022
DOI: 10.1038/s41598-022-12532-7
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A pixel-level coarse-to-fine image segmentation labelling algorithm

Abstract: Fine segmentation labelling tasks are time consuming and typically require a great deal of manual labor. This paper presents a novel method for efficiently creating pixel-level fine segmentation labelling that significantly reduces the amount of necessary human labor. The proposed method utilizes easily produced multiple and complementary coarse labels to build a complete fine label via supervised learning. The primary label among the coarse labels is the manual label, which is produced with simple contours or… Show more

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Cited by 6 publications
(3 citation statements)
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“…An intriguing aspect of our investigation was the trade-off between label ratios and the associated labor labeling costs. As mentioned in references [62,63], an increase in the number of labeled samples exhibits a positive correlation with improved model accuracy. However, this improvement comes at the cost of additional expenses and labor-intensive efforts.…”
Section: Influence Of Label Ratio On Model Accuracymentioning
confidence: 65%
“…An intriguing aspect of our investigation was the trade-off between label ratios and the associated labor labeling costs. As mentioned in references [62,63], an increase in the number of labeled samples exhibits a positive correlation with improved model accuracy. However, this improvement comes at the cost of additional expenses and labor-intensive efforts.…”
Section: Influence Of Label Ratio On Model Accuracymentioning
confidence: 65%
“…Following the same principles as early DPMs, most approaches rely on adding noise in the forward process. Since coarse-to-fine strategies were shown to improve DPMs [24,28], they inspired Lee et al [29] to use blurring with Gaussian convolution instead. Rissanen et al [13] used the equivalence of Gaussian blur to homogeneous diffusion [18] to establish inverse heat dissipation models.…”
Section: Probabilistic Diffusion Modelsmentioning
confidence: 99%
“…However, those are still used primarily for generating new images from text description -and not improving existing ones. That is why we have decided to implement the deblurring diffusion model (Kawar et al, 2022;Ren et al, 2022;Lee et al, 2022) to guide the network to improve the quality of the given heatmap.…”
Section: Introductionmentioning
confidence: 99%