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Titlebook: Water and Plant Life; Problems and Modern O. L. Lange,L. Kappen,E.-D. Schulze Book 1976 Springer-Verlag Berlin · Heidelberg 1976 Plant phy

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发表于 2025-3-30 10:11:20 | 显示全部楼层
al Networks (CNNs) to process it. In this paper a pipeline for TS classification is evaluated on a complex dataset which comprises 18 different ADLs collected from inertial measurement units sensors. The pipeline involves imaging the segmented TS data by employing three encoding techniques namely: G
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and unsupervised classification in an informal treatment, alThe use of pattern recognition and classification is fundamental to many of the automated electronic systems in use today. However, despite the existence of a number of notable books in the field, the subject remains very challenging, espec
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G. Peschel in this paper, integrating the nonlocal means model for the noise removing, the multi-scale Hessian filtering for line-like feature enhancement, the morphological operations for the coarse segmentation, and the localized active contour model for the fine results. Firstly, the nonlocal mean filterin
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J. J. Oertlieep features without any processing. In this paper, a quadratic polynomial residual module is designed to increase the nonlinear fitting ability of the network. As the name suggests, this module superimposes quadratic polynomials of shallow features onto deep features. In this way, the series of two
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J. J. Oertli convolutional neural networks, deep learning methods have been widely used in the object detection task, achieving promising performance compared to traditional methods. However, designing a well-performing detection network is inefficient. It consumes too much hardware resources and time to trial,
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