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Titlebook: Advances in Computer Graphics; 40th Computer Graphi Bin Sheng,Lei Bi,Daniel Thalmann Conference proceedings 2024 The Editor(s) (if applicab

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Visual Analytics of CO, Emissions from Individuals’ Daily Travel Based on Large-Scale Taxi Trajectorappropriate for undergraduate students undergoing final semester of their project work, postgraduate students who have MATLABintegrated in their course or wish to take up simulation problem in the area of system engineering for their dissertation work and research scholars for whom MATLABÊ978-1-85233-337-9978-1-4471-0697-5
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4RATFNet: Four-Dimensional Residual-Attention Improved-Transfer Few-Shot Semantic Segmentation Netwodly in an attempt to improve clinical results. We have developed a treatment concept, evolved out of 20 years of clinical and experimental work, which has proven to be a solid basis for our decision making. Cli978-3-642-62651-7978-3-642-56023-1
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Anomaly Detection of Industrial Products Considering Both Texture and Shape Informationted with the Monte Carlo simulation method, has been carried out. The uncertainty impact on system dependability is investigated and discussed using several examples with different levels of difficulty. The app978-3-319-87920-8978-3-319-64991-7
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Schadenersatzrecht, allgemeiner Teilures, thereby reducing the likelihood of false negatives and false positives during the detection process, especially for small objects. 2) Using the Wise-IoU v3 with two layers of attention mechanisms and a dynamic non-monotonic FM mechanism as the boundary box loss function of the AMDNet, improves
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https://doi.org/10.1007/978-3-211-73388-2nerated mask and ground truth. Experimental results on LEVIR-CD & DSIFN-CD datasets demonstrate that HTRNet outperforms SOAT methods in various metrics. Additionally, our model exhibits smoother edges and robustness in predictions. In summary, HTRNet effectively addresses key challenges in change de
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Gesellschaft bürgerlichen Rechts in human biomechanics. Extensive evaluations demonstrate that our approach significantly outperforms state-of-the-art methods on the datasets such as H3.6M, CMU-Mocap, and 3DPW. Furthermore, the visual result confirms that our Motion Chain Learning Framework can reduce errors in end joints while wo
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