Fast and Accurate Feature-based Region Identification
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Abstract
There have been several improvement in object detection and semantic segmentation results in recent years. Baseline systems that drives these advances are Fast/Faster R-CNN, Fully Convolutional Network and recently Mask R-CNN and its variant that has a weight transfer function. Mask R-CNN is the state-of-art. This research extends the application of the state-of-art in object detection and semantic segmentation in drone based datasets. Existing drone datasets was used to learn semantic segmentation on drone images using Mask R-CNN. This work is the result of my own activity. I have neither given nor received unauthorized assistance on this work.
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APA
(2026). Fast and Accurate Feature-based Region Identification. Afribary. Retrieved June 15, 2026, from http://library.afribary.com/works/fast-and-accurate-feature-based-region-identification
MLA
"Fast and Accurate Feature-based Region Identification." Afribary, 6 Jun. 2026, http://library.afribary.com/works/fast-and-accurate-feature-based-region-identification. Accessed June 15, 2026.
Chicago
"Fast and Accurate Feature-based Region Identification." Afribary (2026). Accessed June 15, 2026. http://library.afribary.com/works/fast-and-accurate-feature-based-region-identification