Matches in SemOpenAlex for { <https://semopenalex.org/work/W4383098158> ?p ?o ?g. }
- W4383098158 abstract "Computer Vision (CV) is used in a broad range of Cyber-Physical Systems such as surgical and factory floor robots and autonomous vehicles including small Unmanned Aerial Systems (sUAS). It enables machines to perceive the world by detecting and classifying objects of interest, reconstructing 3D scenes, estimating motion, and maneuvering around objects. CV algorithms are developed using diverse machine learning and deep learning frameworks, which are often deployed on limited resource edge devices. As sUAS rely upon an accurate and timely perception of their environment to perform critical tasks, problems related to CV can create hazardous conditions leading to crashes or mission failure. In this paper, we perform a systematic literature review (SLR) of CV-related challenges associated with CV, hardware, and software engineering. We then group the reported challenges into five categories and fourteen sub-challenges and present existing solutions. As current literature focuses primarily on CV and hardware challenges, we close by discussing implications for Software Engineering, drawing examples from a CV-enhanced multi-sUAS system." @default.
- W4383098158 created "2023-07-05" @default.
- W4383098158 creator A5005431301 @default.
- W4383098158 creator A5035510306 @default.
- W4383098158 date "2023-05-01" @default.
- W4383098158 modified "2023-10-16" @default.
- W4383098158 title "Engineering Challenges for AI-Supported Computer Vision in Small Uncrewed Aerial Systems" @default.
- W4383098158 cites W1485430920 @default.
- W4383098158 cites W1536680647 @default.
- W4383098158 cites W2006433700 @default.
- W4383098158 cites W2007441987 @default.
- W4383098158 cites W2020139029 @default.
- W4383098158 cites W2053898302 @default.
- W4383098158 cites W2072781714 @default.
- W4383098158 cites W2092074880 @default.
- W4383098158 cites W2102605133 @default.
- W4383098158 cites W2119605622 @default.
- W4383098158 cites W2139241879 @default.
- W4383098158 cites W2141584146 @default.
- W4383098158 cites W2151103935 @default.
- W4383098158 cites W2157225271 @default.
- W4383098158 cites W2165139660 @default.
- W4383098158 cites W2170295302 @default.
- W4383098158 cites W2199890863 @default.
- W4383098158 cites W2316433596 @default.
- W4383098158 cites W2574460394 @default.
- W4383098158 cites W2582222835 @default.
- W4383098158 cites W2746757927 @default.
- W4383098158 cites W2759601165 @default.
- W4383098158 cites W2793091350 @default.
- W4383098158 cites W2794055043 @default.
- W4383098158 cites W2890225206 @default.
- W4383098158 cites W2915071212 @default.
- W4383098158 cites W2960964942 @default.
- W4383098158 cites W2962970995 @default.
- W4383098158 cites W2963150697 @default.
- W4383098158 cites W2965379700 @default.
- W4383098158 cites W2968405839 @default.
- W4383098158 cites W2972838552 @default.
- W4383098158 cites W2973315405 @default.
- W4383098158 cites W2989611864 @default.
- W4383098158 cites W3001482590 @default.
- W4383098158 cites W3010656624 @default.
- W4383098158 cites W3013691622 @default.
- W4383098158 cites W3029238616 @default.
- W4383098158 cites W3031595783 @default.
- W4383098158 cites W3047386722 @default.
- W4383098158 cites W3093500498 @default.
- W4383098158 cites W3096278972 @default.
- W4383098158 cites W3128461879 @default.
- W4383098158 cites W3158295504 @default.
- W4383098158 cites W3158991438 @default.
- W4383098158 cites W3169262488 @default.
- W4383098158 cites W3178141910 @default.
- W4383098158 cites W3192884437 @default.
- W4383098158 cites W3195041733 @default.
- W4383098158 cites W3209687222 @default.
- W4383098158 cites W4290990977 @default.
- W4383098158 cites W4309874955 @default.
- W4383098158 cites W4321020814 @default.
- W4383098158 doi "https://doi.org/10.1109/cain58948.2023.00033" @default.
- W4383098158 hasPublicationYear "2023" @default.
- W4383098158 type Work @default.
- W4383098158 citedByCount "0" @default.
- W4383098158 crossrefType "proceedings-article" @default.
- W4383098158 hasAuthorship W4383098158A5005431301 @default.
- W4383098158 hasAuthorship W4383098158A5035510306 @default.
- W4383098158 hasConcept C107457646 @default.
- W4383098158 hasConcept C108583219 @default.
- W4383098158 hasConcept C111919701 @default.
- W4383098158 hasConcept C154945302 @default.
- W4383098158 hasConcept C162307627 @default.
- W4383098158 hasConcept C169760540 @default.
- W4383098158 hasConcept C199360897 @default.
- W4383098158 hasConcept C206345919 @default.
- W4383098158 hasConcept C26760741 @default.
- W4383098158 hasConcept C2777904410 @default.
- W4383098158 hasConcept C31258907 @default.
- W4383098158 hasConcept C31972630 @default.
- W4383098158 hasConcept C40149104 @default.
- W4383098158 hasConcept C41008148 @default.
- W4383098158 hasConcept C5339829 @default.
- W4383098158 hasConcept C86803240 @default.
- W4383098158 hasConcept C90509273 @default.
- W4383098158 hasConceptScore W4383098158C107457646 @default.
- W4383098158 hasConceptScore W4383098158C108583219 @default.
- W4383098158 hasConceptScore W4383098158C111919701 @default.
- W4383098158 hasConceptScore W4383098158C154945302 @default.
- W4383098158 hasConceptScore W4383098158C162307627 @default.
- W4383098158 hasConceptScore W4383098158C169760540 @default.
- W4383098158 hasConceptScore W4383098158C199360897 @default.
- W4383098158 hasConceptScore W4383098158C206345919 @default.
- W4383098158 hasConceptScore W4383098158C26760741 @default.
- W4383098158 hasConceptScore W4383098158C2777904410 @default.
- W4383098158 hasConceptScore W4383098158C31258907 @default.
- W4383098158 hasConceptScore W4383098158C31972630 @default.
- W4383098158 hasConceptScore W4383098158C40149104 @default.
- W4383098158 hasConceptScore W4383098158C41008148 @default.
- W4383098158 hasConceptScore W4383098158C5339829 @default.
- W4383098158 hasConceptScore W4383098158C86803240 @default.