22,135 research outputs found
Feature Selective Networks for Object Detection
Objects for detection usually have distinct characteristics in different
sub-regions and different aspect ratios. However, in prevalent two-stage object
detection methods, Region-of-Interest (RoI) features are extracted by RoI
pooling with little emphasis on these translation-variant feature components.
We present feature selective networks to reform the feature representations of
RoIs by exploiting their disparities among sub-regions and aspect ratios. Our
network produces the sub-region attention bank and aspect ratio attention bank
for the whole image. The RoI-based sub-region attention map and aspect ratio
attention map are selectively pooled from the banks, and then used to refine
the original RoI features for RoI classification. Equipped with a light-weight
detection subnetwork, our network gets a consistent boost in detection
performance based on general ConvNet backbones (ResNet-101, GoogLeNet and
VGG-16). Without bells and whistles, our detectors equipped with ResNet-101
achieve more than 3% mAP improvement compared to counterparts on PASCAL VOC
2007, PASCAL VOC 2012 and MS COCO datasets
A multi-state model for the reliability assessment of a distributed generation system via universal generating function
International audienceThe current and future developments of electric power systems are pushing the boundaries of reliability assessment to consider distribution networks with renewable generators. Given the stochastic features of these elements, most modeling approaches rely on Monte Carlo simulation. The computational costs associated to the simulation approach force to treating mostly small-sized systems, i.e. with a limited number of lumped components of a given renewable technology (e.g. wind or solar, etc.) whose behavior is described by a binary state, working or failed. In this paper, we propose an analytical multi-state modeling approach for the reliability assessment of distributed generation (DG). The approach allows looking to a number of diverse energy generation technologies distributed on the system. Multiple states are used to describe the randomness in the generation units, due to the stochastic nature of the generation sources and of the mechanical degradation/failure behavior of the generation systems. The universal generating function (UGF) technique is used for the individual component multi-state modeling. A multiplication-type composition operator is introduced to combine the UGFs for the mechanical degradation and renewable generation source states into the UGF of the renewable generator power output. The overall multi-state DG system UGF is then constructed and classical reliability indices (e.g. loss of load expectation (LOLE), expected energy not supplied (EENS)) are computed from the DG system generation and load UGFs. An application of the model is shown on a DG system adapted from the IEEE 34 nodes distribution test feeder
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