Abstract:
This paper investigates how to perform robust image saliency detection by adaptively leveraging different source data. Given the aligned RGB-T image pair, we learn the ro...Show MoreMetadata
Abstract:
This paper investigates how to perform robust image saliency detection by adaptively leveraging different source data. Given the aligned RGB-T image pair, we learn the robust representations for each modality by using deep convolutional neural networks (CNNs) at different scales, which can capture multiscale context features and rich semantic information inherited from the previous CNNs trained on the ImageNet Dataset. Then, we employ fully connected neural network layer to concatenate multiscale CNN features, and infer the saliency map for each modality. For adaptively incorporating the information from RGB and thermal images, we train a SVM regressor on the multiscale CNN features to compute the reliability weight of each modality, and combine them with the corresponding saliency maps to achieve the fused saliency map. In addition, we create a new image dataset and implement some baseline methods with different modality inputs for facilitating the evaluations of RGB-T saliency detection. Experimental results on the newly created dataset demonstrate the effectiveness of the proposed approach against other baseline methods.
Date of Conference: 09-10 December 2017
Date Added to IEEE Xplore: 01 February 2018
ISBN Information:
Electronic ISSN: 2473-3547
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Support Vector Machine ,
- Saliency Detection ,
- Neural Network ,
- Semantic ,
- Convolutional Neural Network ,
- Deep Network ,
- Infrared Imaging ,
- Network Layer ,
- Deep Convolutional Neural Network ,
- Image Pairs ,
- RGB Images ,
- Multi-scale Features ,
- Robust Detection ,
- ImageNet Dataset ,
- Convolutional Neural Network Training ,
- Saliency Map ,
- Convolutional Neural Network Features ,
- Multi-scale Convolutional Neural Network ,
- Multi-scale Context ,
- Output Layer ,
- Multi-scale Feature Extraction ,
- Image Regions ,
- Rectangular Frame ,
- RGB Data ,
- Fully-connected Layer ,
- Thermal Mode ,
- Low Illumination ,
- Non-overlapping Regions ,
- Final Map ,
- Object Detection
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Support Vector Machine ,
- Saliency Detection ,
- Neural Network ,
- Semantic ,
- Convolutional Neural Network ,
- Deep Network ,
- Infrared Imaging ,
- Network Layer ,
- Deep Convolutional Neural Network ,
- Image Pairs ,
- RGB Images ,
- Multi-scale Features ,
- Robust Detection ,
- ImageNet Dataset ,
- Convolutional Neural Network Training ,
- Saliency Map ,
- Convolutional Neural Network Features ,
- Multi-scale Convolutional Neural Network ,
- Multi-scale Context ,
- Output Layer ,
- Multi-scale Feature Extraction ,
- Image Regions ,
- Rectangular Frame ,
- RGB Data ,
- Fully-connected Layer ,
- Thermal Mode ,
- Low Illumination ,
- Non-overlapping Regions ,
- Final Map ,
- Object Detection
- Author Keywords