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Three failed attempts of handling non-sequential data

时间:2017-07-04 18:30:27      阅读:255      评论:0      收藏:0      [点我收藏+]

标签:cts   could   finally   classes   out   change   sequence   into   lda   

The Progress of Products Classification

Cause now we are considering to classify the product by two kinds of features, product images, and product title. I tried to handle these two kinds of features individually, on the product title side, I used Keras build a simple RNN model for classifying 10 classes product, and I got a good result, about 98% accuracy. I test the model with some products from our site, except the title is too ambiguous I can get a proper result, the model doesn‘t know how to handle some combined word, e.g. ‘SmartWatch‘. But I found that the product images are very clear, so I wonder if I could combine these two features it wouldn‘t be a big problem. you can see the watch at  , and my model recognized it as a motherboard. 技术分享

On the other side, I want to build a model to classify the product images. Different from usual image classification problem, I‘m going to make a classifier working on a set of images, for example, a Lenovo Laptop product would contain an image of Lenovo logo, the laptop‘s front and back photograph, and all images can in any order. So, I‘m just doing a job with a set of non-sequential data.

Three failed attempts

1.Working on a single image and combine the result

I trained a usual classifier that accepts a single image, I wrote the model with Keras Vgg16 like before. Suppose we have 3 images, I pass each image to the model, and I got a probability distribution of all classes, assume we have 4 classes, for each image I would get a probability vector like [0.1,0.8,0.05,0.05]. Then, I use weighted average to merge all probability, and I got a problem, If I have 3 images one image is ambiguous and get a low rank on the right classes, suppose the first class is the right class[0.1,0.4,0.3,0.3], and the other two images I get a high rank in the first class [0.98,0.0001,0.003,0.016], for a human, it‘s very certain this product belongs to the first class, but after weighted average the probability might like[0.68,0.1,0.05,0.03].

I also try to build a simple RNN model which accepts all probability vectors, and it didn‘t work.

2.Combine all images into a single data block

Most product images are RGB image, from a mathematic view, it‘s a 3rd order tensor with shape (3,width,height), and each element in the tensor is an integer from 0 to 255.

First, I convert all images into a grayscale image, now the image‘s shape is (width, height), it‘s a matrix. I limit a max number of images as N, if the number of images is less than N, I would fill some blank images, a matrix with all elements set to zero. Second, I merge these images on the 3rd axis, after that, I got a tensor with shape (N, width, height), Finally, I build a model can accept the tensor. But I failed, I got a different result when I reorder the images.

I think the reason why I failed is after convolution and pooling layers I get a 3rd order tensor, I need to reshape the tensor to a vector and pass it to the final classifier, that‘s the job the Keras Flatten layer did, and it‘s more like a weighted average job. when I change the order of the images, I would get a different vector before the classifier. 

3.Add attention mechanism to the model

As I mentioned above, the weighted average caused the problem, I want to do something prevent weighted average before Flatten layer. Attention mechanism is a new technique always be used in RNN, it can make the model learn which part is more important and pay attention to that part. I flowed keras-attention-mechanism to add the attention mechanism to my model. But I failed like before.

Attention mechanism can‘t promise to pass a same tensor to the classifier with a different order of images.

Some thoughts

Like this paper mentioned, I think to deal with non-sequential data, we need to use some statistics feature.

 

Three failed attempts of handling non-sequential data

标签:cts   could   finally   classes   out   change   sequence   into   lda   

原文地址:http://www.cnblogs.com/silent-stranger/p/7117279.html

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