課程目錄:TensorFlow卷積神經網絡培訓
4401 人關注
(78637/99817)
課程大綱:

          TensorFlow卷積神經網絡培訓

 

 

 

Exploring a Larger DatasetIn the first course in this specialization,
you had an introduction to TensorFlow, and how,
with its high level APIs you could do basic image classification,
an you learned a little bit about Convolutional Neural Networks (ConvNets).
In this course you'll go deeper into using ConvNets will real-world data,
and learn about techniques that you can use to improve your ConvNet performance,
particularly when doing image classification!In Week 1, this week,
you'll get started by looking at a much larger dataset than you've been using thus far:
The Cats and Dogs dataset which had been a Kaggle Challenge in image classification!
Augmentation: A technique to avoid overfittingYou've heard the term overfitting a number of times to this point.
Overfitting is simply the concept of being over specialized in training -- namely
that your model is very good at classifying what it is trained for, but not so good at classifying things
that it hasn't seen. In order to generalize your model more effectively,
you will of course need a greater breadth of samples to train it on.
That's not always possible, but a nice potential shortcut to this is Image Augmentation,
where you tweak the training set to potentially increase the diversity of subjects it covers.
You'll learn all about that this week!Transfer LearningBuilding models for yourself is great,
and can be very powerful. But, as you've seen,
you can be limited by the data you have on hand.
Not everybody has access to massive datasets or the compute power that's needed
to train them effectively.
Transfer learning can help solve this -- where people with models trained on large datasets train them,
so that you can either use them directly, or,
you can use the features that they have learned and apply them to your scenario.
This is Transfer learning, and you'll look into that this week!Multiclass
ClassificationsYou've come a long way, Congratulations!
One more thing to do before we move off
of ConvNets to the next module, and that's to go beyond binary classification.
Each of the examples you've done so far involved classifying one thing or another -- horse or human,
cat or dog. When moving beyond binary into Categorical classification there
are some coding considerations you need to take into account. You'll look at them this week!

主站蜘蛛池模板: 99精品国产综合久久久久五月天| 五月丁香六月综合欧美在线| 色悠久久久久久久综合网| 色综合色狠狠天天综合色| 国产色综合天天综合网 | 亚洲国产一成久久精品国产成人综合| 国产成人精品综合网站| 婷婷成人丁香五月综合激情| 久久综合综合久久综合| 狠狠色噜噜狠狠狠狠色综合久AV| 亚洲成A人V欧美综合天堂麻豆| 精品国产国产综合精品| 狠狠色综合久色aⅴ网站 | 国产AV综合影院| 亚洲欧美日韩综合aⅴ视频| 一本色道久久综合狠狠躁| 青青综合在线| 亚洲综合最新无码专区| 天天综合天天做天天综合| 激情综合色五月丁香六月亚洲| 亚洲国产欧美国产综合一区| 亚洲综合国产精品| 天天干天天色综合| 婷婷久久香蕉五月综合加勒比| 久久综合九色综合欧美就去吻| 亚洲综合中文字幕无线码| 人人妻人人狠人人爽天天综合网| 色妞色综合久久夜夜| 香蕉蕉亚亚洲aav综合| 91精品国产91久久综合| 婷婷成人丁香五月综合激情 | 亚洲色欲久久久综合网| 亚洲综合精品香蕉久久网97| 婷婷综合久久狠狠色99h| 伊人久久大香线蕉综合热线| 天天做天天爱天天综合网2021| 亚洲国产免费综合| 国产激情电影综合在线看| 天天做天天爱天天爽综合网| 国产综合成人久久大片91| 亚洲综合在线观看视频|