540 research outputs found

    Measurement of Absorption Cross Section of a Lossy Object in Reverberation Chamber Without the Need for Calibration

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    A reliable and simple procedure is proposed to measure the averaged absorption cross section (ACS) of a lossy object in a reverberation chamber (RC). This procedure is based on the time-domain measurement of the ACS in an RC. In the time-domain, to obtain the ACS, the chamber decay time needs to be known. Conventionally, the ACS is normally measured in the frequency domain, and a full two-port calibration must be carried out before collecting the S-parameters, which is tedious and time-consuming. In reality, the chamber decay time depends on the diffused loss of the RC, not the insertion loss of the cables. In this paper, by making use of this fact, the ACS can be measured accurately without calibration, which will simplify the measurement process and shorten the measurement time at the same time

    Visible-Infrared Person Re-Identification via Patch-Mixed Cross-Modality Learning

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    Visible-infrared person re-identification (VI-ReID) aims to retrieve images of the same pedestrian from different modalities, where the challenges lie in the significant modality discrepancy. To alleviate the modality gap, recent methods generate intermediate images by GANs, grayscaling, or mixup strategies. However, these methods could ntroduce extra noise, and the semantic correspondence between the two modalities is not well learned. In this paper, we propose a Patch-Mixed Cross-Modality framework (PMCM), where two images of the same person from two modalities are split into patches and stitched into a new one for model learning. In this way, the modellearns to recognize a person through patches of different styles, and the modality semantic correspondence is directly embodied. With the flexible image generation strategy, the patch-mixed images freely adjust the ratio of different modality patches, which could further alleviate the modality imbalance problem. In addition, the relationship between identity centers among modalities is explored to further reduce the modality variance, and the global-to-part constraint is introduced to regularize representation learning of part features. On two VI-ReID datasets, we report new state-of-the-art performance with the proposed method.Comment: IJCAI2

    A Rapid Method for Measuring the Volume of a Large Cavity Using Averaged Absorption Cross Section

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    Semi-supervised method for biomedical event extraction

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    Introduction. In Colombia, malaria represents a serious public health problem. It is estimated that approximately 60% of the population is at risk of the disease.Objective. To describe the mortality trends for malaria in Colombia, from 1979 to 2008. Materials and methods. A descriptive study to determine the trends of the malaria mortality was carried out. The information sources used were databases of registered deaths and population projections from 1979 to 2008 of the National Statistics Department. The indicator used was the mortality rate. The trend was analyzed by join point regression.Results. Six thousands nine hundred and sixty five deaths caused by malaria were certified for an age-adjusted rate of 0.74 deaths/100.000 inhabitants for the study period. In 74.3% of the deaths, the parasite species was not mentioned. The trend in the mortality rate showed a statistically significant decreasing behavior, which was lower from the second half of the nineties as compared with that presented in the eighties.Conclusions. The magnitude of mortality by malaria in Colombia is not high, in spite of the evident underreporting. A marked downward trend was observed between 1979 and 2008. The information obtained from death certificates, along with that of the public health surveillance system will allow to modify the recommendations and improve the implementation of preventive and control measures to further reduce the mortality caused by malaria.Introducción. En Colombia, el paludismo representa un grave problema de salud pública. Se estima que, aproximadamente, 60 % de la población se encuentra en riesgo de enfermar o de morir por esta causa.Objetivo. Describir la tendencia de la mortalidad por paludismo en Colombia desde 1979 hasta 2008. Materiales y métodos. Se llevó a cabo un estudio descriptivo para determinar la tendencia de las tasas de mortalidad. Las fuentes de información fueron las bases de datos de las defunciones registradas y de las proyecciones de población de 1979 a 2008 del Departamento Nacional de Estadística (DANE). El indicador empleado fue la tasa de mortalidad. La tendencia se analizó mediante el software de análisis de regresión de puntos de inflexión (joinpoint).Resultados. Se certificaron 6.965 muertes por paludismo para una tasa ajustada por edad de 0,74 muertes por 100.000 habitantes para el periodo estudiado. En 74,3 % de las muertes, no se especificó la especie parasitaria. Las tasas de mortalidad por paludismo presentaron una tendencia decreciente estadísticamente significativa, que fue menor a partir de la segunda mitad de la década de los 90 en comparación con la presentada en la década de los 80.Conclusiones. La magnitud de la mortalidad por paludismo en Colombia no es grande, a pesar del evidente subregistro; se observó una tendencia descendente entre 1979 y 2008. La información derivada de los certificados de defunción, junto con la del sistema de vigilancia en salud pública, permitirá modificar las recomendaciones y mejorar la toma de medidas preventivas y de control pertinentes para continuar reduciendo la mortalidad causada por el paludismo

    Semi-supervised method for biomedical event extraction

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    Diffusion in Diffusion: Cyclic One-Way Diffusion for Text-Vision-Conditioned Generation

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    Text-to-Image (T2I) generation with diffusion models allows users to control the semantic content in the synthesized images given text conditions. As a further step toward a more customized image creation application, we introduce a new multi-modality generation setting that synthesizes images based on not only the semantic-level textual input but also on the pixel-level visual conditions. Existing literature first converts the given visual information to semantic-level representation by connecting it to languages, and then incorporates it into the original denoising process. Seemingly intuitive, such methodological design loses the pixel values during the semantic transition, thus failing to fulfill the task scenario where the preservation of low-level vision is desired (e.g., ID of a given face image). To this end, we propose Cyclic One-Way Diffusion (COW), a training-free framework for creating customized images with respect to semantic text and pixel-visual conditioning. Notably, we observe that sub-regions of an image impose mutual interference, just like physical diffusion, to achieve ultimate harmony along the denoising trajectory. Thus we propose to repetitively utilize the given visual condition in a cyclic way, by planting the visual condition as a high-concentration "seed" at the initialization step of the denoising process, and "diffuse" it into a harmonious picture by controlling a one-way information flow from the visual condition. We repeat the destroy-and-construct process multiple times to gradually but steadily impose the internal diffusion process within the image. Experiments on the challenging one-shot face and text-conditioned image synthesis task demonstrate our superiority in terms of speed, image quality, and conditional fidelity compared to learning-based text-vision conditional methods. Project page is available at: https://bigaandsmallq.github.io/COW/Comment: Project page is available at: https://bigaandsmallq.github.io/COW
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