# Keras-Multi-Label-Image-Classification **Repository Path**: TMAIAM/Keras-Multi-Label-Image-Classification ## Basic Information - **Project Name**: Keras-Multi-Label-Image-Classification - **Description**: 多标签图像分类 这项研究的目的是开发一种深度学习模型,该模型将从图像中识别自然场景。这种类型的问题属于多标签图像分类,其中实例可以在预定义的类别中分为多个类别。 - **Primary Language**: Unknown - **License**: Not specified - **Default Branch**: master - **Homepage**: None - **GVP Project**: No ## Statistics - **Stars**: 0 - **Forks**: 0 - **Created**: 2021-04-01 - **Last Updated**: 2021-04-01 ## Categories & Tags **Categories**: Uncategorized **Tags**: None ## README # Keras Multi label Image Classification The objective of this study is to develop a deep learning model that will identify the natural scenes from images. This type of problem comes under multi label image classification where an instance can be classified into multiple classes among the predefined classes. https://suraj-deshmukh.github.io/Keras-Multi-Label-Image-Classification/ # Dataset The complete description of dataset is given on http://lamda.nju.edu.cn/data_MIMLimage.ashx. The dataset contains 2000 natural scenes images. # Keras Model Architecture ![all tag](https://github.com/suraj-deshmukh/Multi-Label-Image-Classification/blob/master/model.png) # Preprocessing Resized all images to 100 by 100 pixels and created two sets i.e train set and test set. Train set contains 1600 images and test set contains 200 images. # Training As this is multi label image classification, the loss function was binary crossentropy and activation function used was sigmoid at the output layer. Keras doesn't have provision to provide multi label output so after training there is one probabilistic threshold method which find out the best threshold value for each label seperately, the performance of threshold values are evaluated using Matthews Correlation Coefficient and then uses this thresholds to convert those probabilites into one's and zero's. # Result Below table shows the result on test set Accuracy | Value --------- | --------- Hamming loss | 0.1395 Exact Match | 0.54 # Preprocessed Dataset and Weight file download link Dataset: https://drive.google.com/open?id=0BxGfPTc19Ac2a1pDd1dxYlhIVlk Weight file: https://drive.google.com/open?id=0BxGfPTc19Ac2X1RqNnEtRnNBNUE # Ipython notebook Jupyter/iPython Notebook has been provided to know about the model and its working. https://github.com/suraj-deshmukh/Keras-Multi-Label-Image-Classification/blob/master/miml.ipynb # Visualization Command: python visualization.py link: localhost:5000 # Keras repo: Github: https://github.com/keras-team/keras