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Non-speech emotion recognition based on back propagation feed forward networks 基于反向传播前馈网络的非语音情感识别
Pub Date : 2024-03-12 DOI: 10.3233/jifs-238700
Xiwen Zhang, Hui Xiao
Non-speech emotion recognition involves identifying emotions conveyed through non-verbal vocalizations such as laughter, crying, and other sound signals, which play a crucial role in emotional expression and transmission. This paper employs a nine-category discrete emotion model encompassing happy, sad, angry, peaceful, fearful, loving, hateful, brave, and neutral. A proprietary non-speech dataset comprising 2337 instances was utilized, with 384-dimensional feature vectors extracted. The traditional Backpropagation Neural Network (BPNN) algorithm achieved a recognition rate of 87.7% on the non-speech dataset. In contrast, the proposed Whale Optimization Algorithm - Backpropagation Neural Network (WOA-BPNN) algorithm, applied to a self-made non-speech dataset, demonstrated a remarkable accuracy of 98.6% . Notably, even without facial emotional cues, non-speech sounds effectively convey dynamic information, and the proposed algorithm excels in their recognition. The study underscores the importance of non-speech emotional signals in communication, especially with the continuous advancement of artificial intelligence technology. The abstract thus encapsulates the paper’s focus on leveraging AI algorithms for high-precision non-speech emotion recognition.
非语言情绪识别包括识别通过笑声、哭声和其他声音信号等非语言发声传达的情绪,这些声音信号在情绪表达和传递中起着至关重要的作用。本文采用了九类离散情绪模型,包括快乐、悲伤、愤怒、和平、恐惧、爱、憎恨、勇敢和中性。本文使用了一个由 2337 个实例组成的专有非语音数据集,并提取了 384 个维度的特征向量。传统的反向传播神经网络(BPNN)算法在非语音数据集上的识别率达到了 87.7%。相比之下,鲸鱼优化算法--反向传播神经网络(WOA-BPNN)算法在自制的非语音数据集上的识别率高达 98.6%。值得注意的是,即使没有面部情绪线索,非语音声音也能有效传达动态信息,而所提出的算法在识别这些声音方面表现出色。这项研究强调了非语音情感信号在交流中的重要性,尤其是随着人工智能技术的不断进步。因此,该摘要概括了论文的重点,即利用人工智能算法进行高精度的非语音情感识别。
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引用次数: 0
Object pose estimation method for robotic arm grasping 用于机械臂抓取的物体姿态估计方法
Pub Date : 2024-03-12 DOI: 10.3233/jifs-234351
Cheng Huang, Shuyu Hou
To address the issue of target detection in the planar grasping task, a position and attitude estimation method based on YOLO-Pose is proposed. The aim is to detect the three-dimensional position of the spacecraft’s center point and the planar two-dimensional attitude in real time. First, the weight is trained through transfer learning, and the number of key points is optimized by analyzing the shape characteristics of the spacecraft to improve the representation of pose information. Second, the CBAM dual-channel attention mechanism is integrated into the C3 module of the backbone network to improve the accuracy of pose estimation. Furthermore, the Wing Loss function is used to mitigate the problem of random offset in key points. The incorporation of the bi-directional feature pyramid network (BiFPN) structure into the neck network further improves the accuracy of target detection. The experimental results show that the average accuracy value of the optimized algorithm has increased. The average detection speed can meet the speed and accuracy requirements of the actual capture task and has practical application value.
为了解决平面抓取任务中的目标检测问题,提出了一种基于 YOLO-Pose 的位置和姿态估计方法。其目的是实时检测航天器中心点的三维位置和平面二维姿态。首先,通过迁移学习训练权重,并通过分析航天器的形状特征优化关键点的数量,以提高姿态信息的代表性。其次,在主干网络的 C3 模块中集成了 CBAM 双通道注意机制,以提高姿态估计的准确性。此外,还使用了 Wing Loss 函数来缓解关键点随机偏移的问题。在颈部网络中加入双向特征金字塔网络(BiFPN)结构,进一步提高了目标检测的准确性。实验结果表明,优化算法的平均精度值有所提高。平均检测速度能满足实际捕获任务对速度和精度的要求,具有实际应用价值。
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引用次数: 0
Task allocation algorithm for distributed large data stream group computing in the era of digital intelligence 数字智能时代分布式大数据流群计算的任务分配算法
Pub Date : 2024-03-12 DOI: 10.3233/jifs-238427
Ling Sun, Rong Jiang, Wenbing Wan
In the era of digital intelligence, this paper studies the task allocation algorithm of distributed large data stream group computing, and reasonably allocates the task of group computing to meet the needs of massive computing and analysis of distributed large data stream. According to the idea of swarm intelligence perception and crowdsourcing platform, the task allocation model of distributed large data stream group computing is constructed to realize the task allocation of group computing. A distributed large data stream group computing task model and a user model are constructed, user attributes are initialized by using the accuracy of the answers submitted by users, the possibility that users can participate in the group computing task is predicted by a logistic regression algorithm, so that user candidate sequences participating in the computing task can be obtained, and the accuracy of the user’s real topics and corresponding topics can be grasped by capturing the candidate users’ real topics and evaluating the accuracy algorithm. Select the users who meet the subject area, update the candidate user sequence, and filter the users again on the basis of fully considering the factors such as information gain, user integrity and cost, so as to get the final user sequence and complete the task allocation of group computing. Experiments show that this method can solve the problem of distributed large data flow group computing task allocation, achieve high accuracy, reduce the cost, and effectively improve the information gain.
在数字智能时代,本文研究了分布式大数据流群计算的任务分配算法,合理分配群计算任务,满足分布式大数据流海量计算和分析的需要。根据群智感知和众包平台的思想,构建了分布式大数据流群计算的任务分配模型,实现了群计算的任务分配。构建了分布式大数据流群体计算任务模型和用户模型,利用用户提交答案的准确率初始化用户属性,通过逻辑回归算法预测用户参与群体计算任务的可能性,从而得到参与计算任务的用户候选序列,并通过捕捉候选用户的真实话题和准确率评估算法,掌握用户真实话题和对应话题的准确率。选择符合主题领域的用户,更新候选用户序列,在充分考虑信息增益、用户完整性和成本等因素的基础上,再次筛选用户,得到最终的用户序列,完成分组计算的任务分配。实验表明,该方法可以解决分布式大数据流分组计算任务分配问题,实现高精度,降低成本,有效提高信息增益。
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引用次数: 0
Adaptive solar power generation forecasting using enhanced neural network with weather modulation 利用带天气调制的增强型神经网络进行自适应太阳能发电预测
Pub Date : 2024-03-12 DOI: 10.3233/jifs-235612
T. Sujeeth, C. Ramesh, Sushila Palwe, Gandikota Ramu, S. J. Basha, Deepak Upadhyay, K. Chanthirasekaran, K. Sivasankari, A. Rajaram
Solar power generation forecasting plays a vital role in optimizing grid management and stability, particularly in renewable energy-integrated power systems. This research paper presents a comprehensive study on solar power generation forecasting, evaluating traditional and advanced machine learning methods, including ARIMA, Exponential Smoothing, Support Vector Regression, Random Forest, Gradient Boosting, and Physics-based Models. Moreover, we propose an innovative Enhanced Artificial Neural Network (ANN) model, which incorporates Weather Modulation and Leveraging Prior Forecasts to enhance prediction accuracy. The proposed model is evaluated using real-world solar power generation data, and the results demonstrate its superior performance compared to traditional methods and other machine learning approaches. The Enhanced ANN model achieves an impressive Root Mean Square Error (RMSE) of 0.116 and a Mean Absolute Percentage Error (MAPE) of 36.26% . The integration of Weather Modulation allows the model to adapt to changing weather conditions, ensuring reliable forecasts even during adverse scenarios. Leveraging Prior Forecasts enables the model to capture short-term trends, reducing forecasting errors arising from abrupt weather changes. The proposed Enhanced ANN model showcases its potential as a promising tool for precise and reliable solar power generation forecasting, contributing to the efficient integration of solar energy into the power grid and advancing sustainable energy practices.
太阳能发电预测在优化电网管理和稳定性方面发挥着至关重要的作用,尤其是在可再生能源集成电力系统中。本研究论文对太阳能发电预测进行了全面研究,评估了传统和先进的机器学习方法,包括ARIMA、指数平滑、支持向量回归、随机森林、梯度提升和基于物理的模型。此外,我们还提出了一种创新的增强型人工神经网络(ANN)模型,该模型结合了天气调制和利用先前预测来提高预测精度。我们使用真实世界的太阳能发电数据对所提出的模型进行了评估,结果表明,与传统方法和其他机器学习方法相比,该模型性能优越。增强型 ANN 模型的均方根误差 (RMSE) 为 0.116,平均绝对误差 (MAPE) 为 36.26%,令人印象深刻。天气调制的集成使模型能够适应不断变化的天气条件,确保即使在不利情况下也能做出可靠的预测。利用事先预测,该模型能够捕捉短期趋势,减少因天气突变而产生的预测误差。所提出的增强型 ANN 模型展示了其作为精确可靠的太阳能发电预测工具的潜力,有助于将太阳能有效地纳入电网,并推进可持续能源实践。
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引用次数: 0
Economic optimization of fresh logistics pick-up routing problems with time windows based on gray prediction 基于灰色预测的有时间窗口的生鲜物流取货路由问题的经济优化
Pub Date : 2024-03-12 DOI: 10.3233/jifs-235260
Yonghong Liang, Xian-long Ge, Yuanzhi Jin, Zhong Zheng, Yating Zhang, Yunyun Jiang
The rapid development of modern cold chain logistics technology has greatly expanded the sales market of agricultural products in rural areas. However, due to the uncertainty of agricultural product harvesting, relying on the experience values provided by farmers for vehicle scheduling can easily lead to low utilization of vehicle capacity during the pickup process and generate more transportation cost. Therefore, this article adopts a non-linear improved grey prediction method based on data transformation to estimate the pickup demand of fresh agricultural products, and then establishes a mathematical model that considers the fixed vehicle usage cost, the damage cost caused by non-linear fresh fruit and vegetable transportation damage and decay rate, the cooling cost generated by refrigerated transportation, and the time window penalty cost. In order to solve the model, a hybrid simulated annealing algorithm integrating genetic operators was designed to solve this problem. This hybrid algorithm combines local search strategies such as the selection operator without repeated strings and the crossover operator that preserves the best substring to improve the algorithm’s solving performance. Numerical experiments were conducted through a set of benchmark examples, and the results showed that the proposed algorithm can adapt to problem instances of different scales. In 50 customer examples, the difference between the algorithm and the standard value in this paper is 2.30%, which is 7.29% higher than C&S. Finally, the effectiveness of the grey prediction freight path optimization model was verified through a practical case simulation analysis, achieving a logistics cost savings of 9.73% .
现代冷链物流技术的快速发展极大地拓展了农村地区农产品的销售市场。然而,由于农产品采摘的不确定性,依靠农户提供的经验值进行车辆调度,容易导致取货过程中车辆运力利用率低,产生更多的运输成本。因此,本文采用基于数据变换的非线性改进灰色预测方法对生鲜农产品的提货需求进行估算,并建立了考虑固定车辆使用成本、非线性生鲜果蔬运输损耗率和腐烂率导致的损耗成本、冷藏运输产生的降温成本以及时间窗口惩罚成本的数学模型。为了解决该模型,设计了一种集成遗传算子的混合模拟退火算法来解决该问题。该混合算法结合了不重复字符串的选择算子和保留最佳子串的交叉算子等局部搜索策略,以提高算法的求解性能。我们通过一组基准实例进行了数值实验,结果表明所提出的算法能够适应不同规模的问题实例。在 50 个客户实例中,本文算法与标准值的差值为 2.30%,比 C&S 高出 7.29%。最后,通过实际案例仿真分析,验证了灰色预测货运路径优化模型的有效性,实现了 9.73% 的物流成本节约。
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引用次数: 0
A connectivity index based on adjacent vertices in cubic fuzzy graph with an application 基于立方模糊图中相邻顶点的连通性指数及其应用
Pub Date : 2024-03-12 DOI: 10.3233/jifs-238021
Hao Guan, S. Sadati, A. Talebi, J. Shafi, Aysha Khan
A cubic fuzzy graph is a type of fuzzy graph that simultaneously supports two different fuzzy memberships. The study of connectivity in cubic fuzzy graph is an interesting and challenging topic. This research generalized the neighborhood connectivity index in a cubic fuzzy graph with the aim of investigating the connection status of nodes with respect to adjacent vertices. In this survey, the neighborhood connectivity index was introduced in the form of two numerical and distance values. Some characteristics of the neighborhood connectivity index were investigated in cubic fuzzy cycles, saturated cubic fuzzy cycle, complete cubic fuzzy graph and complementary cubic fuzzy graph. The method of constructing a cubic fuzzy graph with arbitrary neighborhood connectivity index was the other point in this research. The results showed that the neighborhood connectivity index depends on the potential of nodes and the number of neighboring nodes. This research was conducted on the Central Bank’s data regarding inter-bank relations and its results were compared in terms of neighborhood connectivity index.
立体模糊图是一种同时支持两种不同模糊成员关系的模糊图。研究立方模糊图中的连通性是一个既有趣又具有挑战性的课题。本研究对立方模糊图中的邻接连通性指数进行了概括,旨在研究节点与相邻顶点的连接状态。本研究以两个数值和距离值的形式介绍了邻接连通性指数。研究了立方模糊循环、饱和立方模糊循环、完整立方模糊图和互补立方模糊图中邻接指数的一些特征。本研究的另一个重点是构建具有任意邻域连通性指数的立方模糊图的方法。结果表明,邻接指数取决于节点的潜力和邻接节点的数量。这项研究以中央银行有关银行间关系的数据为基础,并从邻接连通指数的角度对研究结果进行了比较。
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引用次数: 0
A level set approach using adaptive local pre-fitting energy for image segmentation with intensity non-uniformity 利用自适应局部预拟合能量的水平集方法,用于强度不均匀的图像分割
Pub Date : 2024-03-12 DOI: 10.3233/jifs-237629
Pengqiang Ge, Yiyang Chen, Guina Wang, G. Weng, Hongtian Chen
Active contour model (ACM) is considered as one of the most frequently employed models in image segmentation due to its effectiveness and efficiency. However, the segmentation results of images with intensity non-uniformity processed by the majority of existing ACMs are possibly inaccurate or even wrong in the forms of edge leakage, long convergence time and poor robustness. In addition, they usually become unstable with the existence of different initial contours and unevenly distributed intensity. To better solve these problems and improve segmentation results, this paper puts forward an ACM approach using adaptive local pre-fitting energy (ALPF) for image segmentation with intensity non-uniformity. Firstly, the pre-fitting functions generate fitted images inside and outside contour line ahead of iteration, which significantly reduces convergence time of level set function. Next, an adaptive regularization function is designed to normalize the energy range of data-driven term, which improves robustness and stability to different initial contours and intensity non-uniformity. Lastly, an improved length constraint term is utilized to continuously smooth and shorten zero level set, which reduces the chance of edge leakage and filters out irrelevant background noise. In contrast with newly constructed ACMs, ALPF model not only improves segmentation accuracy (Intersection over union(IOU)), but also significantly reduces computation cost (CPU operating time T), while handling three types of images. Experiments also indicate that it is not only more robust to different initial contours as well as different noise, but also more competent to process images with intensity non-uniformity.
主动轮廓模型(ACM)因其有效性和高效性被认为是图像分割中最常用的模型之一。然而,大多数现有的主动等高线模型在处理强度不均匀的图像时,其分割结果可能不准确甚至是错误的,表现为边缘泄漏、收敛时间长和鲁棒性差。此外,由于存在不同的初始轮廓和不均匀的强度分布,它们通常会变得不稳定。为了更好地解决这些问题,提高分割效果,本文提出了一种利用自适应局部预拟合能量(ALPF)进行强度不均匀图像分割的 ACM 方法。首先,预拟合函数会在迭代之前生成轮廓线内外的拟合图像,这大大缩短了水平集函数的收敛时间。其次,设计了一个自适应正则化函数来规范数据驱动项的能量范围,从而提高了对不同初始轮廓和强度不均匀性的鲁棒性和稳定性。最后,利用改进的长度约束项来持续平滑和缩短零水平集,从而降低边缘泄漏的几率,并过滤掉无关的背景噪声。与新构建的 ACM 相比,ALPF 模型不仅提高了分割精度(Intersection over union(IOU)),还显著降低了计算成本(CPU 运行时间 T),同时还能处理三种类型的图像。实验还表明,它不仅对不同的初始轮廓和不同的噪声具有更强的鲁棒性,而且在处理强度不均匀的图像时也更加得心应手。
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引用次数: 0
MAO-DBN based membrane fouling prediction 基于 MAO-DBN 的膜污垢预测
Pub Date : 2024-03-12 DOI: 10.3233/jifs-233655
Zhiwen Wang, Yibin Zhao, Yaoke Shi, Guobi Ling
Due to the complexity of the factors influencing membrane fouling in membrane bioreactors (MBR), it is difficult to accurately predict membrane fouling. This paper proposes a multi-strategy of integration aquila optimizer deep belief network (MAO-DBN) based membrane fouling prediction method. The method is developed to improve the accuracy and efficiency of membrane fouling prediction. Firstly, partial least squares (PLS) are used to reduce the dimensionality of many membrane fouling factors to improve the algorithm’s generalization ability. Secondly, considering the drawbacks of deep belief network (DBN) such as long training time and easy overfitting, piecewise mapping is introduced in aquila optimizer (AO) to improve the uniformity of population distribution, while adaptive weighting is used to improve the convergence speed and prevent falling into local optimum. Finally, the prediction of membrane fouling is carried out by utilizing membrane fouling data as the research object. The experimental results show that the method proposed in this paper can achieve accurate prediction of membrane fluxes, with an 88.45% reduction in RMSE and 87.53% reduction in MAE compared with the DBN model before improvement. The experimental results show that the model proposed in this paper achieves a prediction accuracy of 98.61%, both higher than other comparative models, which can provide a theoretical basis for membrane fouling prediction in the practical operation of membrane water treatment.
由于膜生物反应器(MBR)中膜污损的影响因素十分复杂,因此很难准确预测膜污损。本文提出了一种基于多策略集成优化器深度信念网络(MAO-DBN)的膜污损预测方法。该方法旨在提高膜污损预测的准确性和效率。首先,利用偏最小二乘法(PLS)降低了许多膜污损因子的维度,从而提高了算法的泛化能力。其次,考虑到深度信念网络(DBN)存在训练时间长、易过拟合等缺点,在AO中引入片断映射以提高种群分布的均匀性,同时采用自适应加权以提高收敛速度,防止陷入局部最优。最后,以膜污损数据为研究对象,进行了膜污损预测。实验结果表明,本文提出的方法可以实现对膜通量的精确预测,与改进前的 DBN 模型相比,RMSE 降低了 88.45%,MAE 降低了 87.53%。实验结果表明,本文提出的模型预测准确率达到 98.61%,均高于其他对比模型,可为膜法水处理实际运行中的膜污垢预测提供理论依据。
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引用次数: 0
Effect of animal behavior on EEG microstates in healthy children: An outdoor observation task 动物行为对健康儿童脑电图微观状态的影响:户外观察任务
Pub Date : 2024-03-11 DOI: 10.3233/jifs-235533
Xiaoting Ding, Jiuchuan Jiang, Mengting Wei, Yue Leng, Haixian Wang
Analyzing physiological signals in the brain under outdoor conditions, like observing animal behavior, forms the normative basis for the outdoor task and provides new insights into the cognitive neuronal mechanisms of children’s functional brain systems. Here we investigated EEG data from a cohort of seventeen children (6–7 years old, 30-channel EEG) in the resting state and animal-observation state, using the microstate method combined with source-localization analysis to identify the changes in network-level functional interactions. Our study suggested that: while observing animal behavior, the parameters (global explained variance, occurrence, coverage, and duration) of microstates showed a regular trend, and the dynamic reorganization patterns of children’s brains were associated with verbal input networks and higher-order cognitive networks; the activity of the brain network in the frontal and temporal lobes of children increased, while the activity of the insula brain area decreased after observing the behavioral activities of animals. This study may be essential to understand the effects of animal behavior on changes in healthy children’s emotions and have important implications for education.
分析户外条件下大脑的生理信号,就像观察动物行为一样,构成了户外任务的规范基础,并为了解儿童大脑功能系统的认知神经元机制提供了新的视角。在此,我们研究了一组 17 名儿童(6-7 岁,30 通道脑电图)在静息状态和观察动物状态下的脑电图数据,使用微状态方法结合源定位分析来识别网络级功能相互作用的变化。我们的研究表明:在观察动物行为时,微状态的参数(全局解释方差、发生率、覆盖率和持续时间)呈规律性趋势,儿童大脑的动态重组模式与言语输入网络和高阶认知网络相关;观察动物行为活动后,儿童额叶和颞叶的脑网络活动增加,而岛叶脑区的活动减少。这项研究可能对了解动物行为对健康儿童情绪变化的影响至关重要,对教育也有重要意义。
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引用次数: 0
Fuzzy logical system for personalized vocal music instruction and psychological awareness in colleges using big data 利用大数据实现高校个性化声乐教学与心理认知的模糊逻辑系统
Pub Date : 2024-03-11 DOI: 10.3233/jifs-236248
Yu Wang
Traditional psychological awareness relating to vocal musical instruction often disregards the impact of earlier experiences on music learning could result in a gap in meeting the needs of individual students. Conventional learning techniques of music related to psychological awareness for each individual has been focused on and addressed in this research. Technological upgrades in Fuzzy Logic (FL) and Big Data (BD) related to Artificial Intelligence (AI) are provided as a solution for the existing challenges and provide enhancement in personalized music education. The combined approach of BD-assisted Radial Basis Function is added with the Takagi Sugeno (RBF-TS) inference system, able to give personalized vocal music instruction recommendations and indulge psychological awareness among students. Applying Mel-Frequency Cepstral Coefficients (MFCC) is beneficial in capturing variant vocal characteristics as a feature extraction technique. The BD-assisted RBF can identify the accuracy of pitch differences and quality of tone, understand choices from students, and stimulate psychological awareness. The uncertainties are addressed by using the TS fuzzy inference system and delivering personalized vocal training depending on different student preference factors. With the use of multimodal data, the proposed RBF-TS approach can establish a fuzzy rule base in accordance with the personalized emotional elements, enhancing self-awareness and psychological well-being. Validation of the proposed approach using an Instruction Resource Utilization Rate (IRUR) gives significant improvements in engaging students, analyzing the pitching accuracy, frequency distribution of vocal music instruction, and loss function called Mean Square Error(MSE). The proposed research algorithm pioneers a novel solution using advanced AI algorithms addressing the research challenges in existing personalized vocal music education. It promises better student outcomes in the field of music education.
在声乐教学中,传统的心理意识往往忽视了学生早期经历对音乐学习的影响,这可能导致在满足学生个体需求方面存在差距。本研究关注并解决了与每个人的心理意识相关的传统音乐学习技巧。与人工智能(AI)相关的模糊逻辑(FL)和大数据(BD)的技术升级为现有挑战提供了解决方案,并为个性化音乐教育提供了提升。将 BD 辅助径向基函数与高木杉野(RBF-TS)推理系统相结合,能够给出个性化的声乐教学建议,培养学生的心理意识。作为一种特征提取技术,梅尔-频率倒频谱系数(MFCC)有利于捕捉不同的声乐特征。北斗辅助 RBF 可以识别音高差异和音质的准确性,了解学生的选择,激发学生的心理意识。通过使用 TS 模糊推理系统解决不确定性问题,并根据不同学生的偏好因素提供个性化声乐训练。利用多模态数据,所提出的 RBF-TS 方法可根据个性化情感要素建立模糊规则库,增强自我意识和心理健康。利用教学资源利用率(IRUR)对所提出的方法进行验证,可显著提高学生的参与度,并分析了音准准确性、声乐教学的频率分布以及平均平方误差(MSE)损失函数。所提出的研究算法利用先进的人工智能算法开创了一种新的解决方案,解决了现有个性化声乐教育中的研究难题。它有望在音乐教育领域为学生带来更好的成果。
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引用次数: 0
期刊
Journal of Intelligent & Fuzzy Systems
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