Semantic Edge Detection with Diverse Deep Supervision
Semantic edge detection (SED), which aims at jointly extracting edges as well as their category information, has far-reaching applications in domains such as semantic segmentation, object proposal generation, and object recognition. SED naturally requires achieving two distinct supervision targets:...
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Zusammenfassung: | Semantic edge detection (SED), which aims at jointly extracting edges as well
as their category information, has far-reaching applications in domains such as
semantic segmentation, object proposal generation, and object recognition. SED
naturally requires achieving two distinct supervision targets: locating fine
detailed edges and identifying high-level semantics. Our motivation comes from
the hypothesis that such distinct targets prevent state-of-the-art SED methods
from effectively using deep supervision to improve results. To this end, we
propose a novel fully convolutional neural network using diverse deep
supervision (DDS) within a multi-task framework where bottom layers aim at
generating category-agnostic edges, while top layers are responsible for the
detection of category-aware semantic edges. To overcome the hypothesized
supervision challenge, a novel information converter unit is introduced, whose
effectiveness has been extensively evaluated on SBD and Cityscapes datasets. |
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DOI: | 10.48550/arxiv.1804.02864 |