covered
GZSL-MoE: Apprentissage G{é}n{é}ralis{é} Z{é}ro-Shot bas{é} sur le M{é}lange d'Experts pour la Segmentation S{é}mantique de Nuages de Points 3DAppliqu{é} {à} un Jeu de Donn{é}es d'Environnement de Collaboration Humain-Robot
Generative Zero-Shot Learning approach (GZSL) has demonstrated significant potential in 3D point cloud semantic segmentation tasks. GZSL leverages generative models like GANs or VAEs to synthesize realistic features (real features) of unseen classes. This allows the model to label unseen classes during testing, despite being trained only on seen classes. In this context, we introduce the Generalized Zero-Shot Learning based-upon Mixture-of-Experts (GZSL-MoE) model. This model incorporates Mixture-of-Experts layers (MoE) to generate fake features that closely resemble real features extracted using a pre-trained KPConv (Kernel Point Convolution) model on seen classes. The main contribution of this paper is the integration of Mixture-of-Experts into the Generator and Discriminator components of the Generative Zero-Shot Learning model for 3D point cloud semantic segmentation, applied to the COVERED dataset (CollabOratiVE Robot Environment Dataset) for Human-Robot Collaboration (HRC) environments. By combining the Generative Zero-Shot Learning model with Mixture-of- Experts, GZSL-MoE for 3D point cloud semantic segmentation provides a promising solution for understanding complex 3D environments, especially when comprehensive training data for all object classes is unavailable. The performance evaluation of the GZSL-MoE model highlights its ability to enhance performance on both seen and unseen classes. Keywords Generalized Zero-Shot Learning (GZSL), 3D Point Cloud, 3D Semantic Segmentation, Human-Robot Collaboration, COVERED (CollabOratiVE Robot Environment Dataset), KPConv, Mixture-of Experts
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A Semantic Space is Worth 256 Language Descriptions: Make Stronger Segmentation Models with Descriptive Properties
Xiao, Junfei, Zhou, Ziqi, Li, Wenxuan, Lan, Shiyi, Mei, Jieru, Yu, Zhiding, Yuille, Alan, Zhou, Yuyin, Xie, Cihang
This paper introduces ProLab, a novel approach using property-level label space for creating strong interpretable segmentation models. Instead of relying solely on category-specific annotations, ProLab uses descriptive properties grounded in common sense knowledge for supervising segmentation models. It is based on two core designs. First, we employ Large Language Models (LLMs) and carefully crafted prompts to generate descriptions of all involved categories that carry meaningful common sense knowledge and follow a structured format. Second, we introduce a description embedding model preserving semantic correlation across descriptions and then cluster them into a set of descriptive properties (e.g., 256) using K-Means. These properties are based on interpretable common sense knowledge consistent with theories of human recognition. We empirically show that our approach makes segmentation models perform stronger on five classic benchmarks (e.g., ADE20K, COCO-Stuff, Pascal Context, Cityscapes, and BDD). Our method also shows better scalability with extended training steps than category-level supervision. Our interpretable segmentation framework also emerges with the generalization ability to segment out-of-domain or unknown categories using only in-domain descriptive properties. Code is available at https://github.com/lambert-x/ProLab.
- Europe > Switzerland > Zürich > Zürich (0.14)
- Europe > Greece (0.04)
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COVERED, CollabOratiVE Robot Environment Dataset for 3D Semantic segmentation
Munasinghe, Charith, Amin, Fatemeh Mohammadi, Scaramuzza, Davide, van de Venn, Hans Wernher
Safe human-robot collaboration (HRC) has recently gained a lot of interest with the emerging Industry 5.0 paradigm. Conventional robots are being replaced with more intelligent and flexible collaborative robots (cobots). Safe and efficient collaboration between cobots and humans largely relies on the cobot's comprehensive semantic understanding of the dynamic surrounding of industrial environments. Despite the importance of semantic understanding for such applications, 3D semantic segmentation of collaborative robot workspaces lacks sufficient research and dedicated datasets. The performance limitation caused by insufficient datasets is called 'data hunger' problem. To overcome this current limitation, this work develops a new dataset specifically designed for this use case, named "COVERED", which includes point-wise annotated point clouds of a robotic cell. Lastly, we also provide a benchmark of current state-of-the-art (SOTA) algorithm performance on the dataset and demonstrate a real-time semantic segmentation of a collaborative robot workspace using a multi-LiDAR system. The promising results from using the trained Deep Networks on a real-time dynamically changing situation shows that we are on the right track. Our perception pipeline achieves 20Hz throughput with a prediction point accuracy of $>$96\% and $>$92\% mean intersection over union (mIOU) while maintaining an 8Hz throughput.
AI's Got You Covered: Unlocking the Power of Automation with Newsletter #34
TL;DR: A new study has found that playing video games can improve certain cognitive skills such as problem solving, memory, and attention. The study was conducted with a group of people who had never previously played video games and the results have been promising. Playing games can be beneficial for those looking to improve their mental skills. If you're a business owner looking to increase the productivity and efficiency of your workflows, you should consider utilizing automation. Automation is a process that allows for the automation of certain tasks or processes.
Asia Pacific Artificial Intelligence In Fintech Market Report 2022: Featuring Key Players IBM, Oracle, Google, Microsoft & Others
Dublin, Aug. 09, 2022 (GLOBE NEWSWIRE) -- The "Asia Pacific Artificial Intelligence In Fintech Market Size, Share & Industry Trends Analysis Report By Component (Solutions and Services), By Deployment (On-premise and Cloud), By Application, By Country and Growth Forecast, 2022 - 2028" report has been added to ResearchAndMarkets.com's offering. The Asia Pacific Artificial Intelligence In Fintech Market is expected to witness market growth of 17.7% CAGR during the forecast period (2022-2028). Artificial intelligence enhances outcomes by employing approaches derived from human intellect but applied at a scale that is not human. Fintech firms have been transformed in recent years as a result of the computational arms race. Additionally, near-endless volumes of data are altering AI to unprecedented heights, and smart contracts may simply be a continuation of the current market trend.
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Artificial Intelligence (AI) in Construction Market SWOT Analysis by Size, Status and Forecast to 2021-2027 - The Manomet Current
Latest published market study on Global Artificial Intelligence (AI) in Construction Market provides an overview of the current market dynamics in the Artificial Intelligence (AI) in Construction space, as well as what our survey respondents--all outsourcing decision-makers--predict the market will look like in 2027. The study breaks market by revenue and volume (wherever applicable) and price history to estimates size and trend analysis and identifying gaps and opportunities. Some of the players that are in coverage of the study are Renoworks Software, SmarTVid.Io, Jaroop, Smartvid.io, Get ready to identify the pros and cons of regulatory framework, local reforms and its impact on the Industry. Market Factor Analysis: In this economic slowdown, impact on various industries is huge.
- Europe (1.00)
- Africa > Middle East > Egypt (0.17)
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AI in Fintech Market development trends, key players, competitive landscape and key regions
The report offers a complete understanding of the improvement approaches, procedures, cost structures, and future growth. Due to the effects of COVID-19, the implementation of AI in Fintech Marketis expected to witness a rapid advance, thereby resulting in the fast growth of the AI in Fintech Market. This is mainly due to the rapid adoption of the technology for mapping the spread of the disease and implementing preventive measures. Hence, various government organizations are utilizing the AI in Fintech Market technology for varied applications during the pandemic. Artificial intelligence enables FinTech to occur in real time.
- Banking & Finance (1.00)
- Health & Medicine > Therapeutic Area > Infections and Infectious Diseases (0.81)
- Health & Medicine > Therapeutic Area > Immunology (0.81)
Artificial Intelligence in Platform as a Service (PaaS) Market Worth Observing Growth
There are 15 Chapters to display the Global Artificial Intelligence in Platform as a Service (PaaS) Market Chapter 1, Overview to describe Definition, Specifications and Classification of Global Artificial Intelligence in Platform as a Service (PaaS) market, Applications [SME & Large Enterprises], Market Segment by Types, Machine Learning Platform, Natural Language Processing Service, Visual Analysis Service, Language Processing Service & Data Insight Service; Chapter 2, objective of the study.
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- Marketing (0.74)
- Banking & Finance (0.72)
- Information Technology > Services (0.69)
2021-2026 Enterprise Artificial Intelligence Market: Analysis by Business Growth, Development Factors, Applications, and Future Prospects – The Bisouv Network
Global "Enterprise Artificial Intelligence Market" report provides qualitative and quantitative information covering market size breakdown, revenue, and growth rate by important segments. The Enterprise Artificial Intelligence market report provides a competitive landscape of major players with the current industry scenario, market concentration status. The report study explores the information on production, consumption, export, and import of Enterprise Artificial Intelligence market in each region. The Enterprise Artificial Intelligence Market is fairly fragmented. The Enterprise Artificial Intelligence Market report profiles some of the key market players while reviewing significant market developments and strategies adopted by them.
Machine Learning in Finance Market Outlook 2020
"Machine Learning in Finance Market 2020" report share informative Covid-19 Outbreak data figures as well as important insights regarding some of the market component which is considered to be future course architects for the market. This includes factors such as market size, market share, market segmentation, significant growth drivers, market competition, different aspects impacting economic cycles in the market, demand, expected business up-downs, changing customer sentiments, key companies operating in the Machine Learning in Finance Market, etc. In order to deliver a complete understanding of the global market, the report also shares some of the useful details regarding regional as well as significant domestic markets. The report presents a 360-degree overview and SWOT analysis of the competitive landscape of the industries. The report also incorporates premium quality data figures associated with financial figures of the industry including market size (in USD), expected market size growth (in percentage), sales data, revenue figures and more.
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- Health & Medicine > Therapeutic Area > Infections and Infectious Diseases (0.73)
- Health & Medicine > Therapeutic Area > Immunology (0.73)