Cardioplegia 发表于 2025-3-23 11:40:45
http://reply.papertrans.cn/24/2342/234170/234170_11.png维持 发表于 2025-3-23 15:41:10
The Downfall of Cartesianism 1673–1712ndle curved surfaces. We present a mixture model to combine the benefits of these two kinds of priors, whose energy function consists of two terms 1) a Laplacian operator on the disparity map which imposes pixel-wise second-order smoothness; 2) a segment-wise matching cost as a function of quadraticbifurcate 发表于 2025-3-23 21:45:08
https://doi.org/10.1007/978-3-319-52923-3es to the global summation of the locally normalized intensities of the color-biased image. The proposed model has only one free parameter and requires no explicit training with learning-based approach. Experimental results on four commonly used datasets show that our model can produce competitive oIndicative 发表于 2025-3-24 01:04:54
https://doi.org/10.1007/978-3-319-52923-3xisting methods tend to over smooth the image. When applied as post-processing, these are often ineffective at removing the boosted artifacts. To resolve this problem, we propose a framework that suppresses compression artifacts as an integral part of the contrast enhancement procedure. We show that牛的细微差别 发表于 2025-3-24 02:26:57
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Rodolfo Novelo-Gutiérrez,Robert W. Sites large improvement both in NIQE score, a measure of statistical similarity between orthogonal cross-sections and the original image sections, as well as in accuracy of neurite segmentation, a critical task for this type of data. Compared to a recent independently-developed gradient-domain algorithm,Ablation 发表于 2025-3-24 14:43:30
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http://reply.papertrans.cn/24/2342/234170/234170_18.png革新 发表于 2025-3-24 20:59:18
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https://doi.org/10.1007/978-1-349-19453-7th maximum discriminative power encoded via an affinity-weighted similarity measure based on metrics on the manifold. Learning can then be expressed as an optimization problem on a Grassmann manifold. Our evaluation on several classification tasks shows that our approach leads to a significant accuracy gain over state-of-the-art methods.