275 research outputs found
Process enhancement of enzyme-catalyzed reactions based on micro- and nano-reactors
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Robust Correlation Tracking for UAV with Feature Integration and Response Map Enhancement
Recently, correlation filter (CF)-based tracking algorithms have attained extensive interest in the field of unmanned aerial vehicle (UAV) tracking. Nonetheless, existing trackers still struggle with selecting suitable features and alleviating the model drift issue for online UAV tracking. In this paper, a robust CF-based tracker with feature integration and response map enhancement is proposed. Concretely, we develop a novel feature integration method that comprehensively describes the target by leveraging auxiliary gradient information extracted from the binary representation. Subsequently, the integrated features are utilized to learn a background-aware correlation filter (BACF) for generating a response map that implies the target location. To mitigate the risk of model drift, we introduce saliency awareness in the BACF framework and further propose an adaptive response fusion strategy to enhance the discriminating capability of the response map. Moreover, a dynamic model update mechanism is designed to prevent filter contamination and maintain tracking stability. Experiments on three public benchmarks verify that the proposed tracker outperforms several state-of-the-art algorithms and achieves a real-time tracking speed, which can be applied in UAV tracking scenarios efficiently
Structural analysis of floating pipes of the fish cage in currents
A numerical model is developed to investigate the structural performance and stress
distribution of floating pipes of fish cage subjected to the flow. The modeling
approach is based on the joint use of the finite element method using the shell elements to
simulate the floating pipes and the hydrodynamic force model improved from the Morison’s equation
and lumped-mass method. The hydrodynamic response of the fish cage and forces on the floating pipes
can be obtained by the Morison’s equation and lumped-mass method. The stress and
deformation of the floating pipes can be evaluated using the finite element method. Using an
appropriate iterative scheme, the stress distribution and maximum stress of the floating pipes can
be obtained using the proposed model. To validate the numerical model, the numerical results were
compared with the data obtained from corresponding physical model tests. The comparisons show the
numerical results agree well with the experimental data. On that basis, the simulations of floating
pipes in currents are performed to investigate the maximum stress and the critical locations.
Simulations of the fish cage in different flow velocity are performed. The effect of the velocity
on the deformations and stress of the floating pipes is analyzed. The simulations results show
that the stress and deformations drastically increases with the increase of flow
velocity. Comparing results of floating pipes with different mooring line arrangements
indicates that increasing mooring lines can efficiently lower the stress of the floating
pipes. The simulation of the SPM cage system with multiple net cages in current is preformed and
the results show the middle cage is most dangerous for the tripartite-cage
system
Searching Transferable Mixed-Precision Quantization Policy through Large Margin Regularization
Mixed-precision quantization (MPQ) suffers from time-consuming policy search
process (i.e., the bit-width assignment for each layer) on large-scale datasets
(e.g., ISLVRC-2012), which heavily limits its practicability in real-world
deployment scenarios. In this paper, we propose to search the effective MPQ
policy by using a small proxy dataset for the model trained on a large-scale
one. It breaks the routine that requires a consistent dataset at model training
and MPQ policy search time, which can improve the MPQ searching efficiency
significantly. However, the discrepant data distributions bring difficulties in
searching for such a transferable MPQ policy. Motivated by the observation that
quantization narrows the class margin and blurs the decision boundary, we
search the policy that guarantees a general and dataset-independent property:
discriminability of feature representations. Namely, we seek the policy that
can robustly keep the intra-class compactness and inter-class separation. Our
method offers several advantages, i.e., high proxy data utilization, no extra
hyper-parameter tuning for approximating the relationship between
full-precision and quantized model and high searching efficiency. We search
high-quality MPQ policies with the proxy dataset that has only 4% of the data
scale compared to the large-scale target dataset, achieving the same accuracy
as searching directly on the latter, and improving the MPQ searching efficiency
by up to 300 times
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