这篇文章来自ICLR2022。 一、背景 •感受野的尺寸对于在时间序列分类任务重的1D CNN来说是非常重要的因素。选择合适的尺寸可能对于性能有巨大的影响并且在每个数据集上差异巨大。 •这篇提出Omni-Scale block,ks…
The framework uses Omni-Scale block with an efficient channel attention mechanism (ECA-OS-block) to capture features at different scales, and performs global adaptive weighting to focus on critical signals via a signal attention mechanism. Then combined with a Fully Convolutional Network as dual ...
Paper tables with annotated results for Learning Generalisable Omni-Scale Representations for Person Re-Identification
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Quantitative measurements at this scale require pixel-level accuracy, corresponding to IoU values above 0.8 (Extended Data Fig. 2). Thus, Omnipose is uniquely suited for the microscopic analysis of bacterial cells. Fig. 3: Omnipose substantially outperforms Cellpose on elongated cells. a, Overall...
It seems to me that we’re grappling with the same question today that Lardner asked, whether at the speed of rail travel, as he addressed it, or at the speed of nanoseconds and the scale of planetary orbit. What are we gaining or losing? Maybe that’s the wrong question. Okay, one...
2. Use scale to lower the cost of goods and fulfillment, and pass along savings to customers through lower prices. When taking into account delivery and taxes, Amazon's prices are substantially lower than competitors like Walmart and Target. 3. Provide a best-in-class customer experience to ...
1 [62] Jeremy Reizenstein, Roman Shapovalov, Philipp Henzler, Luca Sbordone, Patrick Labatut, and David Novotny. Com- mon objects in 3d: Large-scale learning and evaluation of real-life 3d category reconstruction. In Proceedings of the IEEE/CVF International Conference on Computer Vis...
3. 更大的CNN网络可能对ImageNet-1K中的域有过拟合。 作者在实验中尝试了多种更大更深的CNN网络,如表2所示,这些模型和Resnet-50相比大多数能够取得更好的结果,然而作者发现,在一些ImageNet-1K包含的域上(例如mammal,device等),模型的提升更大一些,然而在一些ImageNet-1K未包含的域上(例如aircraft,plant等),...
REESCALE REI REICU/睿库 RELATEK RELECO/瑞莱科 RELMON/瑞盟 RELTEK REMSAS RENISHAW/雷尼绍 RENROHS RENS REOMAX/瑞迈 RERFGRI RERFGRINE RERICOM RESAS RESI/开步睿思 REXROTH/力士乐 REYCONNS/来亿 RFD RFDIGITAL RFFM RFMicro RFMicroDevices RICHNEX/立敏 RICHTEK/立锜 RICHWAVE/立积 RICKMEIER/瑞克梅尔 RICOH/理...