Premise Of The Study: Because plant identification demands extensive knowledge and complex terminologies, even professional botanists require significant time in the field for mastery of the subject. As plant leaves are normally regarded as possessing useful characteristics for species identification, leaf recognition through images can be considered an important research issue for plant recognition. •
Methods: This study proposes a feature extraction method for leaf contours, which describes the lines between the centroid and each contour point on an image. A length histogram is created to represent the distribution of distances in the leaf contour. Thereafter, a classifier is applied from a statistical model to calculate the matching score of the template and query leaf. •
Results: The experimental results show that the top value achieves 92.7% and the first two values can achieve 97.3%. In the scale invariance test, those 45 correlation coefficients fall between the minimal value of 0.98611 and the maximal value of 0.99992. Like the scale invariance test, the rotation invariance test performed 45 comparison sets. The correlation coefficients range between 0.98071 and 0.99988. •
Discussion: This study shows that the extracted features from leaf images are invariant to scale and rotation because those features are close to positive correlation in terms of coefficient correlation. Moreover, the experimental results indicated that the proposed method outperforms two other methods, Zernike moments and curvature scale space.
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http://dx.doi.org/10.3732/apps.1200005 | DOI Listing |
Acta Psychol (Amst)
January 2025
Faculty of Education, Guangxi Normal University, Guilin, China. Electronic address:
This study aimed to validate and assess the psychometric properties of the Chinese adaptation of the Strength-Based Parenting Questionnaire (SBPQ) for the first time. A sample of 1590 middle school students participated in this investigation. Both exploratory factor analysis and confirmatory factor analysis revealed that a 13-item two-factor structure (Strength-Based Parenting Knowledge, SBP-K, and Strength-Based Parenting Use, SBP-U) fit the data well (χ2/df = 8.
View Article and Find Full Text PDFArch Public Health
January 2025
School of Medicine and Medical Sciences, Holy Spirit University of Kaslik, P.O. Box 446, Jounieh, Lebanon.
Background: Despite its obvious relevance for clinical practice and research, it is surprising that presently no hope measure is available for use among Arabic-speaking populations, especially the most vulnerable ones who have been going through major humanitarian crises. This paper aimed to provide novel insights into psychometric information on the psychometric properties of an Arabic translation of the Perceived Hope Scale (PHS) in Palestinians living in Gaza who have endured several months of suffering since the war began in October 2023.
Method: This study had a cross-sectional design and applied a quantitative research approach.
J Neuroinflammation
January 2025
Department of Neuroscience and Experimental Therapeutics, School of Medicine, Texas A&M Health Science Center, Bryan, TX, 77807-3260, USA.
Background: Disturbances of the sleep-wake cycle and other circadian rhythms typically precede the age-related deficits in learning and memory, suggesting that these alterations in circadian timekeeping may contribute to the progressive cognitive decline during aging. The present study examined the role of immune cell activation and inflammation in the link between circadian rhythm dysregulation and cognitive impairment in aging.
Methods: C57Bl/6J mice were exposed to shifted light-dark (LD) cycles (12 h advance/5d) during early adulthood (from ≈ 4-6mo) or continuously to a "fixed" LD12:12 schedule.
Behav Res Methods
January 2025
Paris Lodron University Salzburg, Kapitelgasse 4-6, 5020, Salzburg, Austria.
This article addresses the problem of measurement invariance in psychometrics. In particular, its focus is on the invariance assumption of item parameters in a class of models known as Rasch models. It suggests a mixed-effects or random intercept model for binary data together with a conditional likelihood approach of both estimating and testing the effects of multiple covariates simultaneously.
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