Abstract:
Feature extraction is the first and most critical step in image classification. Most existing image classification methods use hand-crafted features, which are not adapti...Show MoreMetadata
Abstract:
Feature extraction is the first and most critical step in image classification. Most existing image classification methods use hand-crafted features, which are not adaptive for different image domains. In this paper, we develop an evolutionary learning methodology to automatically generate domain-adaptive global feature descriptors for image classification using multiobjective genetic programming (MOGP). In our architecture, a set of primitive 2-D operators are randomly combined to construct feature descriptors through the MOGP evolving and then evaluated by two objective fitness criteria, i.e., the classification error and the tree complexity. After the entire evolution procedure finishes, the best-so-far solution selected by the MOGP is regarded as the (near-)optimal feature descriptor obtained. To evaluate its performance, the proposed approach is systematically tested on the Caltech-101, the MIT urban and nature scene, the CMU PIE, and Jochen Triesch Static Hand Posture II data sets, respectively. Experimental results verify that our method significantly outperforms many state-of-the-art hand-designed features and two feature learning techniques in terms of classification accuracy.
Published in: IEEE Transactions on Neural Networks and Learning Systems ( Volume: 25, Issue: 7, July 2014)
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- IEEE Keywords
- Index Terms
- Image Classification ,
- Feature Learning ,
- Multi-objective Programming ,
- Multi-objective Genetic Programming ,
- Classification Accuracy ,
- Descriptive Characteristics ,
- Handcrafted Features ,
- Objective Criteria ,
- Natural Scenes ,
- Hand Position ,
- Urban Scenes ,
- Feature Representation ,
- Color Images ,
- Object Recognition ,
- Rate Set ,
- Color Space ,
- Learning Settings ,
- Intensity Information ,
- Individual Programs ,
- Scale-invariant Feature Transform ,
- Histogram Of Oriented Gradients ,
- Classification Error Rate ,
- Output Filter ,
- Local Descriptors ,
- Gabor Filters ,
- Deep Belief Network ,
- Scene Dataset ,
- Pareto Front ,
- Image Retrieval
- 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 ,
- Feature Learning ,
- Multi-objective Programming ,
- Multi-objective Genetic Programming ,
- Classification Accuracy ,
- Descriptive Characteristics ,
- Handcrafted Features ,
- Objective Criteria ,
- Natural Scenes ,
- Hand Position ,
- Urban Scenes ,
- Feature Representation ,
- Color Images ,
- Object Recognition ,
- Rate Set ,
- Color Space ,
- Learning Settings ,
- Intensity Information ,
- Individual Programs ,
- Scale-invariant Feature Transform ,
- Histogram Of Oriented Gradients ,
- Classification Error Rate ,
- Output Filter ,
- Local Descriptors ,
- Gabor Filters ,
- Deep Belief Network ,
- Scene Dataset ,
- Pareto Front ,
- Image Retrieval
- Author Keywords
- Author Free Keywords