As the demand for autonomous driving (AD) systems has increased, the enhancement of their safety has become critically important. A fundamental capability of AD systems is object detection and trajectory forecasting of vehicles and pedestrians around the ego-vehicle, which is essential for preventing potential collisions. This study introduces the Deep learning-based Acceleration-aware Trajectory forecasting (DAT) model, a deep learning-based approach for object detection and trajectory forecasting, utilizing raw sensor measurements. DAT is an end-to-end model that processes sequential sensor data to detect objects and forecasts their future trajectories at each time step. The core innovation of DAT lies in its novel forecasting module, which leverages acceleration data to enhance trajectory forecasting, leading to the consideration of a variety of agent motion models. We propose a robust and innovative method for estimating ground-truth acceleration for objects, along with an object detector that predicts acceleration attributes for each detected object and a novel method for trajectory forecasting. DAT is trained and evaluated on the NuScenes dataset, demonstrating its empirical effectiveness through extensive experiments. The results indicate that DAT significantly surpasses state-of-the-art methods, particularly in enhancing forecasting accuracy for objects exhibiting both linear and nonlinear motion patterns, achieving up to a 2× improvement. This advancement highlights the critical role of incorporating acceleration data into predictive models, representing a substantial step forward in the development of safer autonomous driving systems.
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http://dx.doi.org/10.3390/jimaging10120321 | DOI Listing |
Multivariate Behav Res
January 2025
Wake Forest University, Winston-Salem, NC, USA.
Interest in identifying latent growth profiles to support the psychological and social-emotional development of individuals has translated into the widespread use of growth mixture models (GMMs). In most cases, GMMs are based on scores from item responses collected using survey scales or other measures. Research already shows that GMMs can be sensitive to departures from ideal modeling conditions and that growth model results outside of GMMs are sensitive to decisions about how item responses are scored, but the impact of scoring decisions on GMMs has never been investigated.
View Article and Find Full Text PDFNat Commun
January 2025
Department of Biological Sciences, Wellesley College, Wellesley, MA, USA.
Characterizing the dynamics of microbial community succession in the infant gut microbiome is crucial for understanding child health and development, but no normative model currently exists. Here, we estimate child age using gut microbial taxonomic relative abundances from metagenomes, with high temporal resolution (±3 months) for the first 1.5 years of life.
View Article and Find Full Text PDFJ Paediatr Child Health
January 2025
Department of Neurosurgery, The Affiliated Guangdong Second Provincial General Hospital of Jinan University, Guangzhou, China.
Background: Neuroblastoma stands as the most prevalent extracranial solid tumour in children, yet its epidemiological profile on global, regional, and national scales remains insufficiently explored.
Methods: Long-term trends in the incidence and mortality of paediatric neuroblastoma from 1990 to 2021 were analysed globally, regionally, and nationally using estimated annual percentage changes. Cross-national disparities in the burden of paediatric neuroblastoma were quantified through standard health equity methodologies, with projections of burden shifts extending to 2035.
Exp Gerontol
January 2025
Institute of Convergence Healthcare, Dankook University, Cheonan, Republic of Korea; Department of Health Administration, College of Health Science, Dankook University, Cheonan, Republic of Korea. Electronic address:
Purpose: Recently, the World Health Organization has emphasized the importance of a healthy lifestyle in reducing severe illnesses and premature mortality. To evaluate this, the Healthy Lifestyle Score (HLS), which focuses on health protecting behaviors (e.g.
View Article and Find Full Text PDFCurr Res Transl Med
January 2025
Department of Research and Innovation, Medway NHS Foundation Trust, Gillingham ME7 5NY, United Kingdom; Faculty of Medicine, Health and Social Care, Canterbury Christ Church University, United Kingdom.
This narrative review examines the transformative role of Artificial Intelligence (AI) and Machine Learning (ML) in organ retrieval and transplantation. AI and ML technologies enhance donor-recipient matching by integrating and analyzing complex datasets encompassing clinical, genetic, and demographic information, leading to more precise organ allocation and improved transplant success rates. In surgical planning, AI-driven image analysis automates organ segmentation, identifies critical anatomical features, and predicts surgical outcomes, aiding pre-operative planning and reducing intraoperative risks.
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