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Integration of top-down and bottom-up visual processing using a recurrent convolutional–deconvolutional neural network for semantic segmentation

Byung Wan Kim, Youngbin Park, Il Hong Suh

Year
2019
Citations
3

Keywords

Computer sciencePascal (unit)Benchmark (surveying)Artificial intelligenceSegmentationRecurrent neural networkConvolutional neural networkTop-down and bottom-up designDeep learningEncoder

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