190 research outputs found
Single Image Deraining via Rain-Steaks Aware Deep Convolutional Neural Network
It is challenging to remove rain-steaks from a single rainy image because the
rain steaks are spatially varying in the rainy image. This problem is studied
in this paper by combining conventional image processing techniques and deep
learning based techniques. An improved weighted guided image filter (iWGIF) is
proposed to extract high frequency information from a rainy image. The high
frequency information mainly includes rain steaks and noise, and it can guide
the rain steaks aware deep convolutional neural network (RSADCNN) to pay more
attention to rain steaks. The efficiency and explain-ability of RSADNN are
improved. Experiments show that the proposed algorithm significantly
outperforms state-of-the-art methods on both synthetic and real-world images in
terms of both qualitative and quantitative measures. It is useful for
autonomous navigation in raining conditions
A Riemannian ADMM
We consider a class of Riemannian optimization problems where the objective
is the sum of a smooth function and a nonsmooth function, considered in the
ambient space. This class of problems finds important applications in machine
learning and statistics such as the sparse principal component analysis, sparse
spectral clustering, and orthogonal dictionary learning. We propose a
Riemannian alternating direction method of multipliers (ADMM) to solve this
class of problems. Our algorithm adopts easily computable steps in each
iteration. The iteration complexity of the proposed algorithm for obtaining an
-stationary point is analyzed under mild assumptions. To the best of
our knowledge, this is the first Riemannian ADMM with provable convergence
guarantee for solving Riemannian optimization problem with nonsmooth objective.
Numerical experiments are conducted to demonstrate the advantage of the
proposed method
Predicted Optimal Bifunctional Electrocatalysts for the Hydrogen Evolution Reaction and the Oxygen Evolution Reaction Using Chalcogenide Heterostructures Based on Machine Learning Analysis of in Silico Quantum Mechanics Based High Throughput Screening
Two-dimensional van der Waals heterostructure materials, particularly transition metal dichalcogenides (TMDC), have proved to be excellent photoabsorbers for solar radiation, but performance for such electrocatalysis processes as water splitting to form H₂ and O₂ is not adequate. We propose that dramatically improved performance may be achieved by combining two independent TMDC while optimizing such descriptors as rotational angle, bond length, distance between layers, and the ratio of the bandgaps of two component materials. In this paper we apply the least absolute shrinkage and selection operator (LASSO) process of artificial intelligence incorporating these descriptors together with quantum mechanics (density functional theory) to predict novel structures with predicted superior performance. Our predicted best system is MoTe₂/WTe₂ with a rotation of 300°, which is predicted to have an overpotential of 0.03 V for HER and 0.17 V for OER, dramatically improved over current electrocatalysts for water splitting
Design of a Graphene Nitrene Two-Dimensional Catalyst Heterostructure Providing a Well-Defined Site Accommodating 1 to 3 Metals, with Application to COâ‚‚ Reduction Electrocatalysis for the 2 Metal Case
Recently, the reduction of CO₂ to fuels has been the subject of numerous studies, but the selectivity and activity remain inadequate. Progress has been made on single-site two-dimensional catalysts based on graphene coupled to a metal and nitrogen for the CO₂ reduction reaction (CO₂RR); however, the product is usually CO, and the metal–N environment remains ambiguous. We report a novel two-dimensional graphene nitrene heterostructure (grafiN₆) providing well-defined active sites (N₆) that can bind one to three metals for the CO₂RR. We find that homobimetallic FeFe–grafiN₆ could reduce CO₂ to CH₄ at −0.61 V and to CH₃CH₂OH at −0.68 V versus reversible hydrogen electrode, with high product selectivity. Moreover, the heteronuclear FeCu–grafiN₆ system may be significantly less affected by hydrogen evolution reaction, while maintaining a low limiting potential (−0.68 V) for C1 and C2 mechanisms. Binding metals to one N₆ site but not the other could promote efficient electron transport facilitating some reaction steps. This framework for single or multiple metal sites might also provide unique catalytic sites for other catalytic processes
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