machine learning - Convolutional Neural Networks with Caffe and NEGATIVE IMAGES -
when training set of classes (let's #clases (number of classes) = n) on caffe deep learning (or cnn framework) , make query caffemodel, % of probability of image ok.
so, let's take picture of similar class 1, , result:
1.- 90%
2.- 10%
rest... 0%
the problem is: when take random picture (for example of environment), i keep getting same result, 1 of class predominant (>90% probability) doesn't belong class.
so i'd hear opinions/answers people has experienced , have solved how deal no-sense inputs neural network.
my purposes are:
- train 1 more class negative images (like train_cascade).
- train 1 more class positive images in train set, , negative on val set.
but purposes don't have scientific base execute them, that's why ask question.
what do?
thank in advance.
rafael.
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