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DeployFusion: A Deployable Monocular 3D Object Detection with Multi-Sensor Information Fusion in BEV for Edge Devices. DeployFusion:面向边缘设备的可部署单目三维物体检测与多传感器信息融合BEV。
IF 3.4 3区 综合性期刊 Q2 CHEMISTRY, ANALYTICAL Pub Date : 2024-10-31 DOI: 10.3390/s24217007
Fei Huang, Shengshu Liu, Guangqian Zhang, Bingsen Hao, Yangkai Xiang, Kun Yuan

To address the challenges of suboptimal remote detection and significant computational burden in existing multi-sensor information fusion 3D object detection methods, a novel approach based on Bird's-Eye View (BEV) is proposed. This method utilizes an enhanced lightweight EdgeNeXt feature extraction network, incorporating residual branches to address network degradation caused by the excessive depth of STDA encoding blocks. Meantime, deformable convolution is used to expand the receptive field and reduce computational complexity. The feature fusion module constructs a two-stage fusion network to optimize the fusion and alignment of multi-sensor features. This network aligns image features to supplement environmental information with point cloud features, thereby obtaining the final BEV features. Additionally, a Transformer decoder that emphasizes global spatial cues is employed to process the BEV feature sequence, enabling precise detection of distant small objects. Experimental results demonstrate that this method surpasses the baseline network, with improvements of 4.5% in the NuScenes detection score and 5.5% in average precision for detection objects. Finally, the model is converted and accelerated using TensorRT tools for deployment on mobile devices, achieving an inference time of 138 ms per frame on the Jetson Orin NX embedded platform, thus enabling real-time 3D object detection.

为解决现有多传感器信息融合三维物体检测方法中存在的远程检测效果不理想和计算负担沉重的难题,提出了一种基于鸟瞰图(BEV)的新方法。该方法利用增强型轻量级 EdgeNeXt 特征提取网络,结合残余分支来解决 STDA 编码块过深造成的网络退化问题。同时,利用可变形卷积来扩展感受野,降低计算复杂度。特征融合模块构建了一个两阶段融合网络,以优化多传感器特征的融合和对齐。该网络将图像特征与点云特征进行对齐,以补充环境信息,从而获得最终的 BEV 特征。此外,还采用了强调全局空间线索的变换器解码器来处理 BEV 特征序列,从而实现对远处小型物体的精确检测。实验结果表明,该方法超越了基线网络,NuScenes 检测得分提高了 4.5%,检测物体的平均精度提高了 5.5%。最后,利用 TensorRT 工具对模型进行了转换和加速,以便在移动设备上部署,在 Jetson Orin NX 嵌入式平台上实现了每帧 138 毫秒的推理时间,从而实现了实时三维物体检测。
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引用次数: 0
A Study of Mixed Non-Motorized Traffic Flow Characteristics and Capacity Based on Multi-Source Video Data. 基于多源视频数据的混合非机动车交通流特征和容量研究。
IF 3.4 3区 综合性期刊 Q2 CHEMISTRY, ANALYTICAL Pub Date : 2024-10-31 DOI: 10.3390/s24217045
Guobin Gu, Xin Sun, Benxiao Lou, Xiang Wang, Bingheng Yang, Jianqiu Chen, Dan Zhou, Shiqian Huang, Qingwei Hu, Chun Bao

Mixed non-motorized traffic is largely unaffected by motor vehicle congestion, offering high accessibility and convenience, and thus serving as a primary mode of "last-mile" transportation in urban areas. To advance stochastic capacity estimation methods and provide reliable assessments of non-motorized roadway capacity, this study proposes a stochastic capacity estimation model based on power spectral analysis. The model treats discrete traffic flow data as a time-series signal and employs a stochastic signal parameter model to fit stochastic traffic flow patterns. Initially, UAVs and video cameras are used to capture videos of mixed non-motorized traffic flow. The video data were processed with an image detection algorithm based on the YOLO convolutional neural network and a video tracking algorithm using the DeepSORT multi-target tracking model, extracting data on traffic flow, density, speed, and rider characteristics. Then, the autocorrelation and partial autocorrelation functions of the signal are employed to distinguish among four classical stochastic signal parameter models. The model parameters are optimized by minimizing the AIC information criterion to identify the model with optimal fit. The fitted parametric models are analyzed by transforming them from the time domain to the frequency domain, and the power spectrum estimation model is then calculated. The experimental results show that the stochastic capacity model yields a pure EV capacity of 2060-3297 bikes/(h·m) and a pure bicycle capacity of 1538-2460 bikes/(h·m). The density-flow model calculates a pure EV capacity of 2349-2897 bikes/(h·m) and a pure bicycle capacity of 1753-2173 bikes/(h·m). The minimal difference between these estimates validates the effectiveness of the proposed model. These findings hold practical significance in addressing urban road congestion.

非机动车混合交通在很大程度上不受机动车拥堵的影响,具有较高的可达性和便利性,因此成为城市地区 "最后一英里 "交通的主要模式。为了推进随机通行能力估算方法,提供可靠的非机动车道路通行能力评估,本研究提出了一种基于功率谱分析的随机通行能力估算模型。该模型将离散交通流数据视为时间序列信号,并采用随机信号参数模型来拟合随机交通流模式。最初,使用无人机和摄像机捕捉非机动车混合交通流的视频。视频数据采用基于 YOLO 卷积神经网络的图像检测算法和使用 DeepSORT 多目标跟踪模型的视频跟踪算法进行处理,提取交通流量、密度、速度和骑行者特征等数据。然后,利用信号的自相关函数和偏自相关函数来区分四种经典的随机信号参数模型。通过最小化 AIC 信息准则对模型参数进行优化,以确定最佳拟合模型。通过将拟合的参数模型从时域转换到频域进行分析,然后计算功率谱估计模型。实验结果表明,随机容量模型得出的纯电动车容量为 2060-3297 辆/(小时-米),纯自行车容量为 1538-2460 辆/(小时-米)。密度流模型计算出的纯电动车容量为 2349-2897 辆/(小时-米),纯自行车容量为 1753-2173 辆/(小时-米)。这两个估算值之间的微小差异验证了所提模型的有效性。这些发现对于解决城市道路拥堵问题具有实际意义。
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引用次数: 0
Framework for Microdosing Odors in Virtual Reality for Psychophysiological Stress Training. 用于心理生理压力训练的虚拟现实微剂量气味框架。
IF 3.4 3区 综合性期刊 Q2 CHEMISTRY, ANALYTICAL Pub Date : 2024-10-31 DOI: 10.3390/s24217046
Daniel Anheuer, Brid Karacan, Lara Herzog, Nora Weigel, Silja Meyer-Nieberg, Thomas Gebhardt, Jessica Freiherr, Martin Richter, Armin Leopold, Monika Eder, Marko Hofmann, Karl-Heinz Renner, Cornelia Küsel

To better cope with stress in emergencies, emergency personnel undergo virtual reality (VR) stress training. Such training typically includes visual, auditory and sometimes tactile impressions, whereas olfactory stimuli are mostly neglected. This concept paper therefore examines whether odors might be beneficial for further enhancing the experience of presence and immersion into a simulated environment. The aim is to demonstrate the benefits of VR civilian stress training for emergency personnel and to investigate the role of odors as stressors by manipulating the degree of perceived psychophysiological stress via olfactory impressions. Moreover, the current paper presents the development and validation of a convenient and portable fragrance dosing system that allows personalized odor presentation in VR. The presented system can transport reproducible small quantities of an air-fragrance mixture close to the human nose using piezoelectric stainless steel micropumps. The results of the fluidic system validation indicate that the micropump is suitable for releasing odors close to the nose with constant amounts of odor presentation. Furthermore, the theoretical background and the planned experimental design of VR stress training, including odor presentation via olfactory VR technology, are elucidated.

为了更好地应对紧急情况下的压力,应急人员需要接受虚拟现实(VR)压力训练。这种训练通常包括视觉、听觉,有时还有触觉,而嗅觉刺激大多被忽视。因此,本概念文件探讨了气味是否有利于进一步增强模拟环境中的临场感和沉浸感。其目的是证明 VR 民事压力培训对应急人员的益处,并通过嗅觉印象操纵心理生理压力的感知程度,研究气味作为压力源的作用。此外,本论文还介绍了一种方便携带的香味剂量系统的开发和验证情况,该系统可在 VR 中呈现个性化的气味。所介绍的系统可以使用压电不锈钢微泵将少量可重复的空气-香味混合物输送到人的鼻子附近。流体系统验证的结果表明,微型泵适合在鼻腔附近释放气味,并呈现恒定数量的气味。此外,还阐明了 VR 压力训练的理论背景和计划实验设计,包括通过嗅觉 VR 技术呈现气味。
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引用次数: 0
Evaluation of Green Strategies for Prolonging the Lifespan of Linear Wireless Sensor Networks. 评估延长线性无线传感器网络寿命的绿色策略
IF 3.4 3区 综合性期刊 Q2 CHEMISTRY, ANALYTICAL Pub Date : 2024-10-31 DOI: 10.3390/s24217024
Valery Nkemeni, Fabien Mieyeville, Godlove Suila Kuaban, Piotr Czekalski, Krzysztof Tokarz, Wirnkar Basil Nsanyuy, Eric Michel Deussom Djomadji, Musong L Katche, Pierre Tsafack, Bartłomiej Zieliński

Battery-powered sensor nodes encounter substantial energy constraints, especially in linear wireless sensor network (LWSN) applications like border surveillance and road, bridge, railway, powerline, and pipeline monitoring, where inaccessible locations exacerbate battery replacement challenges. Addressing these issues is crucial for extending a network's lifetime and reducing operational costs. This paper presents a comprehensive analysis of the factors affecting WSN energy consumption at the node and network levels, alongside effective energy management strategies for prolonging the WSN's lifetime. By categorizing existing strategies into node energy reduction, network energy balancing, and energy replenishment, this study assesses their effectiveness when implemented in LWSN applications, providing valuable insights to assist engineers during the design of green and energy-efficient LWSN monitoring systems.

电池供电的传感器节点会遇到很大的能源限制,特别是在边境监控和公路、桥梁、铁路、电力线和管道监控等线性无线传感器网络(LWSN)应用中,这些应用中的交通不便地点加剧了电池更换的挑战。解决这些问题对于延长网络寿命和降低运营成本至关重要。本文全面分析了节点和网络层面影响 WSN 能耗的因素,以及延长 WSN 使用寿命的有效能源管理策略。通过将现有策略分为节点能量减少、网络能量平衡和能量补充,本研究评估了这些策略在 LWSN 应用中的实施效果,为工程师设计绿色节能的 LWSN 监控系统提供了宝贵的见解。
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引用次数: 0
An Improved Vital Signal Extraction Method Based on Laser Doppler Effect. 基于激光多普勒效应的改进型生命信号提取方法
IF 3.4 3区 综合性期刊 Q2 CHEMISTRY, ANALYTICAL Pub Date : 2024-10-31 DOI: 10.3390/s24217027
Yu Li, Haiyang Zhang, Bowen Zhang, Yujiao Qi, Si Chen

The mixed signal of respiratory waveform and heartbeat waveform detected by the Laser-Doppler system is processed with an intermediate-frequency (IF) interference filtering method, an enhanced extraction method and a waveform-fixing method. To filter the IF interference signals and the noise scatters in the time-frequency graph, the filtering method based on coefficient of variation (CoV) values and the enhanced curve extraction method based on noise-scatter theory are utilized in vital signal analysis. To decouple the respiratory signal and the heartbeat signal in time domain, the waveform-fixing method based on second-order difference theory is utilized in signal decoupling. This method as an algorithm is applied in the computer simulation and laboratory environments. The results show that the above methods can extract the mixed waveforms and identify the respiratory rates and heart rates in real experimental data. The IF interference signal can be filtered adaptively, and the accuracy of the analyzed rates can be improved to about 95%.

激光多普勒系统检测到的呼吸波形和心跳波形的混合信号是通过中频(IF)干扰过滤法、增强提取法和波形固定法处理的。为了过滤中频干扰信号和时频图中的噪声散射,在生命信号分析中使用了基于变异系数(CoV)值的滤波方法和基于噪声散射理论的增强曲线提取方法。为了在时域上解耦呼吸信号和心跳信号,在信号解耦中使用了基于二阶差分理论的波形固定方法。该方法作为一种算法被应用于计算机模拟和实验室环境中。结果表明,上述方法可以提取混合波形,并识别真实实验数据中的呼吸频率和心率。中频干扰信号可进行自适应滤波,分析速率的准确率可提高到 95% 左右。
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引用次数: 0
Comparison of Classical and Inverse Calibration Equations in Chemical Analysis. 化学分析中经典校准方程与反校准方程的比较。
IF 3.4 3区 综合性期刊 Q2 CHEMISTRY, ANALYTICAL Pub Date : 2024-10-31 DOI: 10.3390/s24217038
Hsuan-Yu Chen, Chiachung Chen

Chemical analysis adopts a calibration curve to establish the relationship between the measuring technique's response and the target analyte's standard concentration. The calibration equation is established using regression analysis to verify the response of a chemical instrument to the known properties of materials that served as standard values. An adequate calibration equation ensures the performance of these instruments. There are two kinds of calibration equations: classical equations and inverse equations. For the classical equation, the standard values are independent, and the instrument's response is dependent. The inverse equation is the opposite: the instrument's response is the independent value. For the new response value, the calculation of the new measurement by the classical equation must be transformed into a complex form to calculate the measurement values. However, the measurement values of the inverse equation could be computed directly. Different forms of calibration equations besides the linear equation could be used for the inverse calibration equation. This study used measurement data sets from two kinds of humidity sensors and nine data sets from the literature to evaluate the predictive performance of two calibration equations. Four criteria were proposed to evaluate the predictive ability of two calibration equations. The study found that the inverse calibration equation could be an effective tool for complex calibration equations in chemical analysis. The precision of the instrument's response is essential to ensure predictive performance. The inverse calibration equation could be embedded into the measurement device, and then intelligent instruments could be enhanced.

化学分析采用校准曲线来确定测量技术的响应与目标分析物标准浓度之间的关系。校准方程是通过回归分析建立的,用于验证化学仪器对作为标准值的已知材料特性的响应。适当的校准方程可确保这些仪器的性能。校准方程有两种:经典方程和逆反方程。对于经典方程,标准值是独立的,而仪器的响应则是依赖的。反比方程则相反:仪器的响应是独立值。对于新的响应值,经典方程对新测量值的计算必须转换为复数形式来计算测量值。然而,反方程的测量值可以直接计算。除了线性方程外,不同形式的校准方程也可用于逆校准方程。本研究使用两种湿度传感器的测量数据集和文献中的九个数据集来评估两个校准方程的预测性能。提出了四个标准来评估两个校准方程的预测能力。研究发现,逆校准方程是化学分析中复杂校准方程的有效工具。仪器响应的精度对确保预测性能至关重要。可以将反标定方程嵌入测量设备中,从而提高仪器的智能化程度。
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引用次数: 0
A Review of Rotational Seismology Area of Interest from a Recording and Rotational Sensors Point of View. 从记录和旋转传感器的角度回顾旋转地震学关注领域。
IF 3.4 3区 综合性期刊 Q2 CHEMISTRY, ANALYTICAL Pub Date : 2024-10-31 DOI: 10.3390/s24217003
Anna T Kurzych, Leszek R Jaroszewicz

This article reviews rotational seismology, considering different areas of interest, as well as measuring devices used for rotational events investigations. After a short theoretical description defining the fundamental parameters, the authors summarized data published in the literature in areas such as the indirect numerical investigation of rotational effects, rotation measured during earthquakes, teleseismic wave investigation, rotation induced by artificial explosions, and mining activity. The fundamental data on the measured rotation parameters and devices used for the recording are summarized and compared for the above areas. In the section on recording the rotational effects associated with artificial explosions and mining activities, the authors included results recorded by a rotational seismograph of their construction-FOSREM (fibre-optic system for rotational events and phenomena monitoring). FOSREM has a broad range of capabilities to measure rotation rates, from several dozen nrad/s to 10 rad/. It can be controlled remotely and operated autonomously for a long time. It is a useful tool for systematic seismological investigations in various places. The report concludes with a short discussion of the importance of rotational seismology and the great need to obtain experimental data in this field.

本文回顾了旋转地震学,考虑了不同的关注领域以及用于旋转事件调查的测量设备。在对基本参数进行简短的理论描述后,作者总结了文献中发表的数据,涉及的领域包括旋转效应的间接数值研究、地震期间测量到的旋转、远震波研究、人工爆炸引起的旋转以及采矿活动。对上述领域的测量旋转参数和记录所用设备的基本数据进行了总结和比较。在记录与人工爆炸和采矿活动有关的自转效应部分,作者纳入了他们建造的自转地震仪--FOSREM(自转事件和现象监测光纤系统)所记录的结果。FOSREM 具有测量旋转速率的广泛能力,从几十 nrad/s 到 10 rad/s。它可以远程控制,并可长时间自主运行。它是在各地进行系统地震学调查的有用工具。报告最后简短地讨论了旋转地震学的重要性和获取该领域实验数据的迫切需要。
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引用次数: 0
FBG and BOTDA Based Monitoring of Mine Pressure Under Remaining Coal Pillars Using Physical Modeling. 利用物理建模,基于 FBG 和 BOTDA 监测剩余煤柱下的矿压。
IF 3.4 3区 综合性期刊 Q2 CHEMISTRY, ANALYTICAL Pub Date : 2024-10-31 DOI: 10.3390/s24217037
Dingding Zhang, Zhi Li, Yanyan Duan, Long Yang, Hongrui Liu

Strong mine pressure often emerges when the working face of the lower coal seam in a closely spaced coal seam system passes through the remaining coal pillar in the overlying goaf. This study investigates the law of overburden movement and the manifestation of mine pressure during mining under the remaining coal pillar. A physical model measuring 2.5 × 0.2 × 1.503 m is constructed. Fiber Bragg grating sensing technology (FBG) and Brillouin optical time domain analysis technology (BOTDA) are employed in the physical model experiment to monitor the internal strain of the overlying rock as the working face advances. This study determines the laws of overlying rock fracture and working face pressure while mining coal seams beneath the remaining coal pillar. It analyzes the relationship between the pressure at the working face and the strain characteristics of the horizontally distributed optical fiber. A fiber grating characterization method is established for the stress evolution law of overlying rock while passing the remaining coal pillar. The experimental results indicated that the fracture angle of overlying rock gradually decreases during the mining stage through and after the coal pillar. In the mining stage through the coal pillar, the cycle pressure step distance of the working face is reduced by 33.3% compared to the stage after mining through the coal pillar. Initially, the strain pattern of the horizontal optical fiber is unimodal when pressure is first applied to the working face, and it transitions from unimodal to bimodal during periodic pressure. The peak value of fiber Bragg grating compressive strain and the range of influence of advanced support pressure are 3.6 times and 4.8 times, respectively, before passing through the remaining coal pillar. Finally, the accuracy of the FBG characterization method is verified by comparing it to the monitoring curve of the coal seam floor pressure sensor. The research results contribute to applying fiber optic sensing technology in mining physical model experiments.

当密布煤层系统中下煤层的工作面穿过上覆煤层的剩余煤柱时,往往会产生强大的矿压。本研究探讨了在剩余煤柱下开采时覆盖层的运动规律和矿压的表现形式。构建了一个尺寸为 2.5 × 0.2 × 1.503 m 的物理模型。在物理模型实验中采用了光纤布拉格光栅传感技术(FBG)和布里渊光学时域分析技术(BOTDA),以监测工作面推进过程中上覆层岩石的内部应变。该研究确定了在剩余煤柱下开采煤层时,上覆岩石断裂和工作面压力的规律。研究分析了工作面压力与水平分布光纤应变特性之间的关系。建立了通过剩余煤柱时上覆岩石应力演变规律的光纤光栅表征方法。实验结果表明,在穿过煤柱和煤柱后的开采阶段,上覆岩石的断裂角逐渐减小。在穿过煤柱的开采阶段,工作面的循环压力步距比穿过煤柱后的开采阶段减少了 33.3%。工作面初次受压时,水平光纤的应变模式为单峰模式,周期受压时由单峰模式过渡到双峰模式。在通过剩余煤柱之前,光纤布拉格光栅压缩应变的峰值和超前支护压力的影响范围分别为 3.6 倍和 4.8 倍。最后,通过与煤层底板压力传感器监测曲线的对比,验证了光纤布拉格光栅表征方法的准确性。研究成果有助于将光纤传感技术应用于采矿物理模型实验。
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引用次数: 0
DDAM-Net: A Difference-Directed Multi-Scale Attention Mechanism Network for Cultivated Land Change Detection. DDAM-Net:用于耕地变化检测的差分定向多尺度注意机制网络
IF 3.4 3区 综合性期刊 Q2 CHEMISTRY, ANALYTICAL Pub Date : 2024-10-31 DOI: 10.3390/s24217040
Junbiao Feng, Haikun Yu, Xiaoping Lu, Xiaoran Lv, Junli Zhou

Declining cultivated land poses a serious threat to food security. However, existing Change Detection (CD) methods are insufficient for overcoming intra-class differences in cropland, and the accumulation of irrelevant features and loss of key features leads to poor detection results. To effectively identify changes in agricultural land, we propose a Difference-Directed Multi-scale Attention Mechanism Network (DDAM-Net). Specifically, we use a feature extraction module to effectively extract the cropland's multi-scale features from dual-temporal images, and we introduce a Difference Enhancement Fusion Module (DEFM) and a Cross-scale Aggregation Module (CAM) to pass and fuse the multi-scale and difference features layer by layer. In addition, we introduce the Attention Refinement Module (ARM) to optimize the edge and detail features of changing objects. In the experiments, we evaluated the applicability of DDAM-Net on the HN-CLCD dataset for cropland CD and non-agricultural identification, with F1 and precision of 79.27% and 80.70%, respectively. In addition, generalization experiments using the publicly accessible PX-CLCD and SET-CLCD datasets revealed F1 and precision values of 95.12% and 95.47%, and 72.40% and 77.59%, respectively. The relevant comparative and ablation experiments suggested that DDAM-Net has greater performance and reliability in detecting cropland changes.

耕地减少对粮食安全构成严重威胁。然而,现有的变化检测(CD)方法不足以克服耕地的类内差异,无关特征的积累和关键特征的丢失导致检测结果不佳。为了有效识别农田变化,我们提出了一种差异导向多尺度注意机制网络(DDAM-Net)。具体来说,我们使用特征提取模块从双时相图像中有效提取耕地的多尺度特征,并引入差分增强融合模块(DEFM)和跨尺度聚合模块(CAM)对多尺度特征和差分特征进行逐层传递和融合。此外,我们还引入了注意力细化模块(ARM),以优化变化对象的边缘和细节特征。实验中,我们在 HN-CLCD 数据集上评估了 DDAM-Net 在耕地 CD 和非农业识别中的适用性,F1 和精度分别为 79.27% 和 80.70%。此外,使用公开的 PX-CLCD 和 SET-CLCD 数据集进行的泛化实验显示,F1 和精度值分别为 95.12% 和 95.47%,以及 72.40% 和 77.59%。相关的对比实验和消融实验表明,DDAM-Net 在检测耕地变化方面具有更高的性能和可靠性。
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引用次数: 0
Diagnosis of Pancreatic Ductal Adenocarcinoma Using Deep Learning. 利用深度学习诊断胰腺导管腺癌
IF 3.4 3区 综合性期刊 Q2 CHEMISTRY, ANALYTICAL Pub Date : 2024-10-31 DOI: 10.3390/s24217005
Fulya Kavak, Sebnem Bora, Aylin Kantarci, Aybars Uğur, Sumru Cagaptay, Deniz Gokcay, Anıl Aysal, Burcin Pehlivanoglu, Ozgul Sagol

Recent advances in artificial intelligence (AI) research, particularly in image processing technologies, have shown promising applications across various domains, including health care. There is a significant effort to use AI for the early diagnosis and detection of diseases, offering cost-effective and timely solutions to enhance patient outcomes. This study introduces a deep learning network aimed at analyzing pathology images for the accurate diagnosis of pancreatic cancer, specifically pancreatic ductal adenocarcinoma (PDAC). Utilizing a novel dataset comprised of cases diagnosed with PDAC and/or chronic pancreatitis, this study applies deep learning algorithms to assess the effectiveness and reliability of the diagnostic process. The dataset was enhanced through image duplication and the creation of a second dataset with varied dimensions, facilitating the training of advanced transfer learning models including InceptionV3, DenseNet, ResNet, VGG, EfficientNet, and a specially designed deep neural network. The study presents a convolutional neural network model, optimized for the rapid and accurate detection of pancreatic cancer, and conducts a comparative analysis with other models to select the most accurate algorithm for a decision support system. The results from Dataset 1 show that EfficientNetB0 achieved a high success rate of 92%. In Dataset 2, VGG16 was found to have high performance, with a success rate of 92%. On the other hand, ResNet50 achieved a remarkable success rate of 96% despite a moderate training time and showed high precision, recall, F1 score, and accuracy. These results provide valuable data to demonstrate and share the relevance of different deep learning models in pancreatic cancer diagnosis.

人工智能(AI)研究的最新进展,特别是在图像处理技术方面,已经在包括医疗保健在内的各个领域显示出广阔的应用前景。人们正努力将人工智能用于疾病的早期诊断和检测,为提高患者的治疗效果提供具有成本效益的及时解决方案。本研究介绍了一种深度学习网络,旨在分析病理图像以准确诊断胰腺癌,特别是胰腺导管腺癌(PDAC)。本研究利用由确诊为 PDAC 和/或慢性胰腺炎病例组成的新型数据集,应用深度学习算法来评估诊断过程的有效性和可靠性。该数据集通过图像复制和创建具有不同维度的第二个数据集得到了增强,从而促进了高级迁移学习模型的训练,包括 InceptionV3、DenseNet、ResNet、VGG、EfficientNet 和一个专门设计的深度神经网络。本研究提出了一个卷积神经网络模型,该模型经过优化,可快速、准确地检测胰腺癌,并与其他模型进行了比较分析,为决策支持系统选择了最准确的算法。数据集 1 的结果显示,EfficientNetB0 的成功率高达 92%。在数据集 2 中,VGG16 的性能很高,成功率达到 92%。另一方面,尽管训练时间适中,ResNet50 仍取得了 96% 的显著成功率,并显示出较高的精度、召回率、F1 分数和准确率。这些结果为展示和分享不同深度学习模型在胰腺癌诊断中的相关性提供了宝贵的数据。
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引用次数: 0
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