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디컨볼루션 픽셀층 기반의 도로 이미지의 의미론적 분할
Deconvolution Pixel Layer Based Semantic Segmentation for Street View Images
( Abdul Wahid ) , ( Hyo Jong Lee )
UCI I410-ECN-0102-2022-500-000347210
이 자료는 4페이지 이하의 자료입니다.

Semantic segmentation has remained as a challenging problem in the field of computer vision. Given the immense power of Convolution Neural Network (CNN) models, many complex problems have been solved in computer vision. Semantic segmentation is the challenge of classifying several pixels of an image into one category. With the help of convolution neural networks, we have witnessed prolific results over the time. We propose a convolutional neural network model which uses Fully CNN with deconvolutional pixel layers. The goal is to create a hierarchy of features while the fully convolutional model does the primary learning and later deconvolutional model visually segments the target image. The proposed approach creates a direct link among the several adjacent pixels in the resulting feature maps. It also preserves the spatial features such as corners and edges in images and hence adding more accuracy to the resulting outputs. We test our algorithm on Karlsruhe Institute of Technology and Toyota Technologies Institute (KITTI) street view data set. Our method achieves an mIoU accuracy of 92.04 %.

[자료제공 : 네이버학술정보]
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