15,130 research outputs found
SBNet: Sparse Blocks Network for Fast Inference
Conventional deep convolutional neural networks (CNNs) apply convolution
operators uniformly in space across all feature maps for hundreds of layers -
this incurs a high computational cost for real-time applications. For many
problems such as object detection and semantic segmentation, we are able to
obtain a low-cost computation mask, either from a priori problem knowledge, or
from a low-resolution segmentation network. We show that such computation masks
can be used to reduce computation in the high-resolution main network. Variants
of sparse activation CNNs have previously been explored on small-scale tasks
and showed no degradation in terms of object classification accuracy, but often
measured gains in terms of theoretical FLOPs without realizing a practical
speed-up when compared to highly optimized dense convolution implementations.
In this work, we leverage the sparsity structure of computation masks and
propose a novel tiling-based sparse convolution algorithm. We verified the
effectiveness of our sparse CNN on LiDAR-based 3D object detection, and we
report significant wall-clock speed-ups compared to dense convolution without
noticeable loss of accuracy.Comment: 10 pages, CVPR 201
Spin transverse force and intrinsic quantum transverse transport
The spin-orbit coupling may generate spin transverse force on moving electron
spin, which gives a heuristic picture for the quantum transverse transport of
electron. A relation between the spin and anomalous Hall conductance and spin
force was established, and applied to several systems. It was predicted that
the sign change of anomalous Hall conductance can occur in diluted magnetic
semiconductors of narrow band and can be applied to identify intrinsic
mechanism experimentally
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