Abstract:
We now know that good mid-level features can greatly enhance the performance of image classification, but how to efficiently learn the image features is still an open que...Show MoreMetadata
Abstract:
We now know that good mid-level features can greatly enhance the performance of image classification, but how to efficiently learn the image features is still an open question. In this paper, we present an efficient unsupervised midlevel feature learning approach (MidFea), which only involves simple operations, such as k-means clustering, convolution, pooling, vector quantization, and random projection. We show this simple feature can also achieve good performance in traditional classification task. To further boost the performance, we model the neuron selectivity (NS) principle by building an additional layer over the midlevel features prior to the classifier. The NS-layer learns category-specific neurons in a supervised manner with both bottom-up inference and top-down analysis, and thus supports fast inference for a query image. Through extensive experiments, we demonstrate that this higher level NS-layer notably improves the classification accuracy with our simple MidFea, achieving comparable performances for face recognition, gender classification, age estimation, and object categorization. In particular, our approach runs faster in inference by an order of magnitude than sparse coding-based feature learning methods. As a conclusion, we argue that not only do carefully learned features (MidFea) bring improved performance, but also a sophisticated mechanism (NS-layer) at higher level boosts the performance further.
Published in: IEEE Transactions on Image Processing ( Volume: 24, Issue: 8, August 2015)
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- IEEE Keywords
- Index Terms
- Image Classification ,
- Classification Accuracy ,
- Classification Performance ,
- Extensive Experiments ,
- Feature Learning ,
- Face Recognition ,
- Age Estimation ,
- Gender Binary ,
- Mean Vector ,
- Means Clustering ,
- Sophisticated Mechanisms ,
- Sparse Feature ,
- Random Projection ,
- Vector Quantization ,
- Feature Learning Method ,
- Top-down Analysis ,
- Unsupervised Feature Learning ,
- Convolutional Neural Network ,
- Nonlinear Function ,
- Sparse Coding ,
- Feature Maps ,
- Low-level Features ,
- SIFT Features ,
- Local Descriptors ,
- Selective Layer ,
- Adaptive Learning ,
- Linear Classifier ,
- Linear Support Vector Machine ,
- Top-down Methods
- Author Keywords
- Author Free Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Image Classification ,
- Classification Accuracy ,
- Classification Performance ,
- Extensive Experiments ,
- Feature Learning ,
- Face Recognition ,
- Age Estimation ,
- Gender Binary ,
- Mean Vector ,
- Means Clustering ,
- Sophisticated Mechanisms ,
- Sparse Feature ,
- Random Projection ,
- Vector Quantization ,
- Feature Learning Method ,
- Top-down Analysis ,
- Unsupervised Feature Learning ,
- Convolutional Neural Network ,
- Nonlinear Function ,
- Sparse Coding ,
- Feature Maps ,
- Low-level Features ,
- SIFT Features ,
- Local Descriptors ,
- Selective Layer ,
- Adaptive Learning ,
- Linear Classifier ,
- Linear Support Vector Machine ,
- Top-down Methods
- Author Keywords
- Author Free Keywords