开放课件详细信息
PIMS-IMA Math Modeling in Industry XIX
Deep Learning for Image Anomaly Detection - Final Report
授课人:Ross Churchley
机构:Pacific Institute for the Mathematical Sciences(PIMS)
关键词: Scientific;    Applied;    Mathematics;    Applied Mathematics;    Deep Learning;    Image Anomaly Detection;   
加拿大|英语
【 摘 要 】
The machine learning community has witnessed significant advances recently in the realm of image recognition [1,2]. Advances in computing power – primarily through the use of GPUs – has enabled a resurgence of neural networks with far more layers than was previously possible. For instance, the winning team, GoogLeNet [1,3], at the ImageNet 2014 competition triumphed with a 43.9% mean average precision, while the previous year’s winner, University of Amsterdam, won with 22.6% mean average precision.Neural networks mimic the neurons in the brain. As in the human brain, multiple layers of computational “neurons” are designed to react to a variety of stimuli. For instance, a typical scheme to construct a neural network could involve building a layer of neurons that detects edges in an image. An additional layer could then be added which would be trained (optimized) to detect larger regions or shapes. The combination of these two layers could then identify and separate different objects present in a photograph. Adding further layers would allow the network to use the shapes to decipher the types of objects recorded in the image.
【 授权许可】

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