Abstract:
Inspired by the perceived saturation of human visual system, this paper proposes a two-stream hybrid networks to simulate binocular vision for salient object detection (S...Show MoreMetadata
Abstract:
Inspired by the perceived saturation of human visual system, this paper proposes a two-stream hybrid networks to simulate binocular vision for salient object detection (SOD). Each stream in our system consists of unsupervised and supervised methods to form a two-branch module, so as to model the interaction between human intuition and memory. The two-branch module parallel processes visual information with bottom-up and top-down SODs, and output two initial saliency maps. Then a polyharmonic neural network with random-weight (PNNRW) is utilized to fuse two-branch’s perception and refine the salient objects by learning online via multi-source cues. Depend on visual perceptual saturation, we can select optimal parameter of superpixel for unsupervised branch, locate sampling regions for PNNRW, and construct a positive feedback loop to facilitate perception saturated after the perception fusion. By comparing the binary outputs of the two-stream, the pixel annotation of predicted object with high saturation degree could be taken as new training samples. The presented method constitutes a semi-supervised learning framework actually. Supervised branches only need to be pre-trained initial, the system can collect the training samples with high confidence level and then train new models by itself. Extensive experiments show that the new framework can improve performance of the existing SOD methods, that exceeds the state-of-the-art methods in six popular benchmarks.
Published in: IEEE Transactions on Image Processing ( Volume: 30)
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- IEEE Keywords
- Index Terms
- Object Detection ,
- Salient Object ,
- Salient Object Detection ,
- Neural Network ,
- Positive Feedback ,
- Positive Feedback Loop ,
- Binocular ,
- Top-down And Bottom-up ,
- High Level Of Confidence ,
- Degree Of Saturation ,
- Saliency Map ,
- Binary Output ,
- Popular Benchmark ,
- Human Intuition ,
- Eye Movements ,
- Deep Models ,
- Fixed Point ,
- Visual Perception ,
- Time Sequence ,
- Human Eye ,
- Fully Convolutional Network ,
- Shallow Neural Network ,
- Microsaccades ,
- Bottom-up Model ,
- Extreme Learning Machine ,
- Unsupervised Model ,
- Visual Attention ,
- Saccade ,
- Stereopsis ,
- Saliency Models
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Object Detection ,
- Salient Object ,
- Salient Object Detection ,
- Neural Network ,
- Positive Feedback ,
- Positive Feedback Loop ,
- Binocular ,
- Top-down And Bottom-up ,
- High Level Of Confidence ,
- Degree Of Saturation ,
- Saliency Map ,
- Binary Output ,
- Popular Benchmark ,
- Human Intuition ,
- Eye Movements ,
- Deep Models ,
- Fixed Point ,
- Visual Perception ,
- Time Sequence ,
- Human Eye ,
- Fully Convolutional Network ,
- Shallow Neural Network ,
- Microsaccades ,
- Bottom-up Model ,
- Extreme Learning Machine ,
- Unsupervised Model ,
- Visual Attention ,
- Saccade ,
- Stereopsis ,
- Saliency Models
- Author Keywords