Image semantic segmentation method based on super-pixel edge and full convolutional network
A fully convolutional network and semantic segmentation technology, which is applied in the field of image semantic segmentation based on superpixel edges and fully convolutional networks, can solve problems such as low accuracy, reduce workload, expand selection range, and improve segmentation accuracy. Effect
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[0043] specific implementation plan
[0044] Below in conjunction with accompanying drawing and specific embodiment, the present invention is described in further detail:
[0045] refer to figure 1 , an image semantic segmentation method based on superpixel edges and fully convolutional networks, including the following steps:
[0046] Step 1 Construct training sample set, validation sample set and test sample set:
[0047] In order to expand the scale of the sample set, this example combines the existing most commonly used sample sets BSDS500 and PASCAL VOC2011 to obtain a total of 12023 images, and randomly selects 11223 (90%) of them as the training sample set, 400 ( 5%) as the verification sample set, and the remaining 400 (5%) as the test sample set. When training, only the training sample set can be used; when testing, only the test sample set can be used; similarly, when verifying, only the verification sample set can be used.
[0048] Step 2 Build a fully convoluti...
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