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Monocular thermal SLAM with neural radiance fields for 3D scene reconstruction 基于神经辐射场的单目热SLAM三维场景重建
IF 5.5 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2024-11-30 DOI: 10.1016/j.neucom.2024.129041
Yuzhen Wu , Lingxue Wang , Lian Zhang , Mingkun Chen , Wenqu Zhao , Dezhi Zheng , Yi Cai
Visual simultaneous localization and mapping (SLAM) faces significant challenges in environments with variable lighting and smoke. Excelling in such visually degraded settings, thermal imaging captures scene radiance effectively. To address the limitations of traditional thermal SLAM in 3D scene reconstruction, we propose ThermalSLAM-NeRF, a novel integration of thermal SLAM with neural radiance fields (NeRF). This method significantly enhances the quality of high dynamic range thermal images by improving their signal-to-noise ratio, contrast, and detail. It also employs online photometric calibration to ensure grayscale consistency between consecutive frames. We utilize a sparse direct method for pose estimation, selecting keyframes based on photometric error and tracking quality. The NeRF map is reconstructed using a multi-view keyframe sequence. Our evaluations on datasets containing over 15,000 thermal images show that ThermalSLAM-NeRF achieves an average improvement of 59.30% in trajectory accuracy over existing state-of-the-art SLAM methods. This approach uniquely tracks all sequences and constructs comprehensive NeRF maps, enabling robust and precise pose estimation without the need for extensive pre-training.
在多变的光照和烟雾环境下,视觉同步定位和地图绘制(SLAM)面临着巨大的挑战。在这种视觉退化的设置中,热成像可以有效地捕获场景亮度。为了解决传统热SLAM在三维场景重建中的局限性,我们提出了一种将热SLAM与神经辐射场(NeRF)相结合的新方法ThermalSLAM-NeRF。该方法通过改善图像的信噪比、对比度和细节,显著提高了高动态范围热图像的质量。它还采用在线光度校准,以确保连续帧之间的灰度一致性。我们利用稀疏直接方法进行姿态估计,根据光度误差和跟踪质量选择关键帧。NeRF地图使用多视图关键帧序列重建。我们对包含超过15,000张热图像的数据集进行了评估,结果表明,与现有最先进的SLAM方法相比,ThermalSLAM-NeRF的轨迹精度平均提高了59.30%。这种方法独特地跟踪所有序列并构建全面的NeRF地图,无需广泛的预训练即可实现鲁棒和精确的姿态估计。
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引用次数: 0
A user behavior-aware multi-task learning model for enhanced short video recommendation 增强短视频推荐的用户行为感知多任务学习模型
IF 5.5 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2024-11-29 DOI: 10.1016/j.neucom.2024.129076
Yuewei Wu , Ruiling Fu , Tongtong Xing , Zhenyu Yu , Fulian Yin
In the rapidly evolving landscape of digital media consumption, accurately predicting user preferences and behaviors is critical for the effectiveness of recommendation systems, especially for short video content. Traditional recommendation methods often ignore the association between multiple user behavior types and struggle with dynamically adapting to user behavior changes, leading to suboptimal personalization and user engagement. To address these issues, this paper introduces a user behavior-aware multi-task learning model for enhanced short video recommendation (UBA-SVR) by leveraging insights into dynamic user interactions. In our approach, we construct a user behavior-aware transformer to comprehensively capture users’ dynamic interests and generate the fusion feature representation. Subsequently, we introduce a hierarchical knowledge extraction framework to process features in multi-stage and adopt a task-aware attention mechanism within the tower network structure to facilitate effective information sharing and differentiation among tasks. Furthermore, we employ a dynamic joint loss optimization strategy to adaptively adjust the loss weights for different tasks to promote collaborative enhancement. Extensive experiments on two real-world datasets demonstrate that the proposed method achieves significant improvements in multiple prediction tasks simultaneously.
在快速发展的数字媒体消费环境中,准确预测用户偏好和行为对于推荐系统的有效性至关重要,特别是对于短视频内容。传统的推荐方法往往忽略了多种用户行为类型之间的关联,难以动态适应用户行为的变化,导致个性化和用户参与度不理想。为了解决这些问题,本文引入了一个用户行为感知的多任务学习模型,通过利用对动态用户交互的洞察来增强短视频推荐(UBA-SVR)。在我们的方法中,我们构建了一个用户行为感知转换器来全面捕获用户的动态兴趣并生成融合特征表示。随后,我们引入分层知识提取框架对特征进行多阶段处理,并在塔式网络结构中采用任务感知关注机制,促进任务间的有效信息共享和区分。此外,我们采用动态联合损失优化策略自适应调整不同任务的损失权重,以促进协同增强。在两个真实数据集上的大量实验表明,该方法在同时处理多个预测任务方面取得了显著的改进。
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引用次数: 0
Learning a more compact representation for low-rank tensor completion 学习一个更紧凑的低秩张量补全表示
IF 5.5 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2024-11-29 DOI: 10.1016/j.neucom.2024.129036
Xi-Zhuo Li, Tai-Xiang Jiang, Liqiao Yang, Guisong Liu
Transform-based tensor nuclear norm (TNN) methods have gained considerable attention for their effectiveness in addressing tensor recovery challenges. The integration of deep neural networks as nonlinear transforms has been shown to significantly enhance their performance. Minimizing transform-based TNN is equivalent to minimizing the 1 norm of singular values in the transformed domain, which can be interpreted as finding a sparse representation with respect to the bases supported by singular vectors. This work aims to advance deep transform-based TNN methods by identifying a more compact representation through learnable bases, ultimately improving recovery accuracy. We specifically employ convolutional kernels as these learnable bases, demonstrating their capability to generate more compact representation, i.e., sparser coefficients of real-world tensor data compared to singular vectors. Our proposed model consists of two key components: a transform component, implemented through fully connected neural networks (FCNs), and a convolutional component that replaces traditional singular matrices. Then, this model is optimized using the ADAM algorithm directly on the incomplete tensor in a zero-shot manner, meaning all learnable parameters within the FCNs and convolution kernels are inferred solely from the observed data. Experimental results indicate that our method, with this straightforward yet effective modification, outperforms state-of-the-art approaches on video and multispectral image recovery tasks.
基于变换的张量核范数(TNN)方法因其在解决张量恢复挑战方面的有效性而受到广泛关注。作为非线性变换的深度神经网络集成已被证明可以显著提高其性能。最小化基于变换的TNN等价于最小化变换域中奇异值的v1范数,这可以解释为寻找关于奇异向量支持的基的稀疏表示。这项工作旨在通过可学习的基来识别更紧凑的表示,从而推进基于深度变换的TNN方法,最终提高恢复精度。我们特别使用卷积核作为这些可学习的基,证明它们能够生成更紧凑的表示,即与奇异向量相比,真实张量数据的稀疏系数。我们提出的模型由两个关键组件组成:通过全连接神经网络(fcn)实现的变换组件和取代传统奇异矩阵的卷积组件。然后,直接在不完全张量上使用ADAM算法以零射击的方式对该模型进行优化,这意味着fcn和卷积核内的所有可学习参数都仅从观测数据中推断出来。实验结果表明,通过这种简单有效的修改,我们的方法在视频和多光谱图像恢复任务上优于最先进的方法。
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引用次数: 0
An HVS-derived network for assessing the quality of camouflaged targets with feature fusion 一种基于hvs的特征融合伪装目标质量评估方法
IF 5.5 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2024-11-29 DOI: 10.1016/j.neucom.2024.129016
Qiyang Sun, Xia Wang, Changda Yan, Xin Zhang, Shiwei Xu
High-value assets on the battlefield typically require adequate camouflage to evade detection and annihilation by enemy scouts. Consequently, artificial camouflage technology is extensively acknowledged and utilized as a crucial defensive tactic in the military sphere. The quality of camouflage performance was assessed by military observers through the human visual system (HVS). This method involved locating the camouflaged objects and rating the camouflaged degree against the background. Current camouflage assessment methods typically involved the manual extraction and aggregation of objective features throughout an image. These approaches fall short in constructing a correlation mapping between objective features and subjective perceptions of camouflaged objects, culminating in imprecise assessments and discrepancies. To address these issues, this paper presents the first three-stage full-reference learning framework for locating camouflaged objects, extracting camouflage features, and assessing camouflage quality. Given the lack of datasets specifically designed for evaluating camouflage quality, we have contributed a datasets focused on human-camouflaged targets. The experimental results show that the three-stage framework is remarkably accurate in assessing the camouflage quality, leading to an explainable network. The camouflaged people quality assessment(CPQA) dataset is available at http://github.com/samsunq/CPQA_Datasets.git.
战场上的高价值资产通常需要足够的伪装来逃避敌方侦察兵的侦察和歼灭。因此,人工伪装技术作为一种重要的防御战术在军事领域得到了广泛的认可和利用。军事观察员通过人眼视觉系统(HVS)对伪装性能的质量进行了评估。该方法包括定位伪装对象,并根据背景对伪装程度进行评定。目前的伪装评估方法通常涉及人工提取和聚集整个图像的客观特征。这些方法在构建客观特征和对伪装物体的主观感知之间的相关性映射方面存在不足,最终导致不精确的评估和差异。为了解决这些问题,本文提出了第一个三阶段全参考学习框架,用于定位伪装目标、提取伪装特征和评估伪装质量。鉴于缺乏专门用于评估伪装质量的数据集,我们提供了一个专注于人类伪装目标的数据集。实验结果表明,三级框架在评估伪装质量方面具有显著的准确性,形成了一个可解释的网络。伪装人质量评估(CPQA)数据集可在http://github.com/samsunq/CPQA_Datasets.git上获得。
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引用次数: 0
Global Span Semantic Dependency Awareness and Filtering Network for nested named entity recognition 用于嵌套命名实体识别的全局语义依赖感知和过滤网络
IF 5.5 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2024-11-29 DOI: 10.1016/j.neucom.2024.129035
Yunlei Sun, Xiaoyang Wang, Haosheng Wu, Miao Hu
Span-based methods for nested named entity recognition (NER) are effective in handling the complexities of nested entities with hierarchical structures. However, these methods often overlook valid semantic dependencies among global spans, resulting in a partial loss of semantic information. To address this issue, we propose the Global Span Semantic Dependency Awareness and Filtering Network (GSSDAF). Our model begins with BERT for initial sentence encoding. Following this, a span semantic representation matrix is generated using a multi-head biaffine attention mechanism. We introduce the Global Span Dependency Awareness (GSDA) module to capture valid semantic dependencies among all spans, and the Local Span Dependency Enhancement (LSDE) module to selectively enhance key local dependencies. The enhanced span semantic representation matrix is then decoded to classify the spans. We evaluated our model on seven public datasets. Experimental results demonstrate that our model effectively handles nested NER, achieving higher F1 scores compared to baselines. Ablation experiments confirm the effectiveness of each module. Further analysis indicates that our model can learn valid semantic dependencies between global spans, significantly improving the accuracy of nested entity recognition. Our code is available at https://github.com/Shaun-Wong/GSSDAF.
基于跨度的嵌套命名实体识别(NER)方法可以有效地处理具有层次结构的嵌套实体的复杂性。然而,这些方法往往忽略了全局跨度之间有效的语义依赖关系,从而导致语义信息的部分丢失。为了解决这个问题,我们提出了全球跨度语义依赖感知和过滤网络(GSSDAF)。我们的模型从BERT开始进行初始句子编码。在此基础上,利用多头双仿注意机制生成了一个跨语义表示矩阵。我们引入了全局跨度依赖感知(GSDA)模块来捕获所有跨度之间有效的语义依赖,以及本地跨度依赖增强(LSDE)模块来选择性地增强关键的本地依赖。然后对增强的跨度语义表示矩阵进行解码,对跨度进行分类。我们在七个公共数据集上评估了我们的模型。实验结果表明,我们的模型有效地处理了嵌套的NER,与基线相比获得了更高的F1分数。烧蚀实验验证了各模块的有效性。进一步的分析表明,我们的模型可以学习到全局跨度之间有效的语义依赖关系,显著提高了嵌套实体识别的准确性。我们的代码可在https://github.com/Shaun-Wong/GSSDAF上获得。
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引用次数: 0
A novel multi-morphological representation approach for multi-source EEG signals 一种新的多源脑电信号多形态表示方法
IF 5.5 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2024-11-29 DOI: 10.1016/j.neucom.2024.129010
Yunyuan Gao , Yici Liu , Ming Meng , Feng Fang , Michael Houston , Yingchun Zhang
Advances in artificial intelligence have significantly enhanced intelligent assistance and rehabilitation medicine by leveraging electroencephalogram (EEG) signal recognition. Nevertheless, eliminating cross-subject variability remains a significant challenge in expending the application of EEG signal recognition to the broader society. The transfer learning strategy has been utilized to address this issue; however, multi-source domains are often treated as a single entity in transfer learning, leading to underutilization of the information from multiple sources. Furthermore, many EEG signal transfer approaches overlook the low-dimensional structural information and multivariate statistical features inherent in EEG signals, leading to inadequate interpretability and suboptimal performance. Thus, in this study, a novel multi-morphological representation approach (MMRA) was proposed for multi-source EEG signal recognition to address these issues. MMRA utilized multi-manifold mapping to extract the common invariant representation shared between the multi-source domains and target domain. It took into account the low-dimensional structure and multivariate statistical features of EEG signals to enhance the acquisition of high-quality common invariant representations. Subsequently, the multi-source domains were decomposed to extract one-to-one features. The Maximum Mean Discrepancy (MMD) loss was further applied to guide the model in obtaining high-quality private invariant representations. The performance of the proposed MMRA method was evaluated using three publicly available motor imagery datasets and a driving fatigue dataset. Experimental results demonstrated that our proposed MMRA method outperformed other state-of-the-art methods in scenarios involving multiple subjects. In conclusion, the MMRA method developed in this study can serve as a novel tool offering enhanced performance to analyze EEG signals across various subjects.
人工智能的进步利用脑电图(EEG)信号识别显著增强了智能辅助和康复医学。然而,在将脑电信号识别扩展到更广泛的社会应用过程中,消除跨主体变异性仍然是一个重大挑战。迁移学习策略被用来解决这个问题;然而,在迁移学习中,多源领域往往被视为一个单一的实体,导致对多源信息的利用不足。此外,许多脑电信号传递方法忽略了脑电信号固有的低维结构信息和多元统计特征,导致可解释性不足和性能不佳。为此,本研究提出了一种新的多形态表征方法(MMRA)来解决这些问题。MMRA利用多流形映射来提取多源域和目标域之间共享的公共不变表示。该方法充分考虑了脑电信号的低维结构和多元统计特征,增强了对高质量通用不变表示的获取。随后,对多源域进行分解,提取一对一特征。进一步应用最大平均差异(MMD)损失来指导模型获得高质量的私有不变表示。使用三个公开可用的运动图像数据集和一个驾驶疲劳数据集来评估所提出的MMRA方法的性能。实验结果表明,我们提出的MMRA方法在涉及多受试者的场景中优于其他最先进的方法。总之,本研究开发的MMRA方法可以作为一种新的工具,为分析不同受试者的脑电信号提供更好的性能。
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引用次数: 0
Soft prompt-tuning for unsupervised domain adaptation via self-supervision 基于自监督的无监督域自适应软提示调整
IF 5.5 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2024-11-28 DOI: 10.1016/j.neucom.2024.129008
Yi Zhu , Shuqin Wang , Yun Li , Yunhao Yuan , Jipeng Qiang
Unsupervised domain adaptation methods aim to facilitate learning tasks in unlabeled target domains using labeled information from related source domains. Recently, prompt-tuning has emerged as a powerful instrument to incorporate templates that reformulate input examples into equivalent cloze-style phrases. However, there are still two great challenges for domain adaptation: (1) Existing prompt-tuning methods only rely on the general knowledge distributed in upstream pre-trained language models to alleviate the domain discrepancy. How to incorporate specific features in the source and target domains into prompt-tuning model is still divergent and under-explored; (2) In the prompt-tuning, either the crafted template methods are time-consuming and labor-intensive, or automatic prompt generation methods cannot achieve satisfied performance. To address these issues, in this paper, we propose an innovative Soft Prompt-tuning method for Unsupervised Domain Adaptation via Self-Supervision, which combines two novel ideas: Firstly, instead of only stimulating knowledge distributed in the pre-trained model, we further employ hierarchically clustered optimization strategies in a self-supervised manner to retrieve knowledge for the verbalizer construction in prompt-tuning. Secondly, we construct prompts with the special designed verbalizer that facilitate the transfer of learning representations across domains, which can consider both the automatic template generation and cross-domain classification performance. Extensive experimental results demonstrate that our method even outperforms SOTA baselines that utilize external open knowledge with much less computational time.
无监督域自适应方法的目的是利用相关源域的标记信息来促进无标记目标域的学习任务。最近,提示调优已经成为一种强大的工具,可以将模板合并,将输入示例重新表述为等价的完形式短语。然而,领域自适应仍然存在两大挑战:(1)现有的提示调优方法仅依赖于分布在上游预训练语言模型中的一般知识来缓解领域差异。如何将源域和目标域的特定特征融合到提示调优模型中,目前仍存在分歧和探索不足;(2)在提示调优中,手工制作的模板方法耗时费力,或者自动生成提示的方法无法达到满意的性能。针对这些问题,本文提出了一种创新的基于自监督的无监督领域自适应软提示调谐方法,该方法结合了两个新思想:首先,我们不再仅仅刺激预训练模型中分布的知识,而是进一步采用自监督方式的分层聚类优化策略来检索提示调谐中的语言器构建的知识。其次,我们使用特殊设计的语言表达器构建提示符,促进学习表征的跨域迁移,同时考虑模板的自动生成和跨域分类性能。大量的实验结果表明,我们的方法甚至优于利用外部开放知识的SOTA基线,计算时间更少。
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引用次数: 0
RTA: A reinforcement learning-based temporal knowledge graph question answering model RTA:基于强化学习的时态知识图问答模型
IF 5.5 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2024-11-28 DOI: 10.1016/j.neucom.2024.128994
Yu Zhu , Tinghuai Ma , Shengjie Sun , Huan Rong , Yexin Bian , Kai Huang
Temporal Knowledge Graph Question Answering (TKGQA) is crucial research, focusing on finding an entity or a timestamp to answer temporal questions in the corresponding temporal knowledge graph. Currently, the main challenge in the temporal KGQA task is answering complex temporal questions, often necessitating complex multi-hop temporal reasoning in the TKG. In this paper, we propose a method for the TKGQA task called Reinforcement learning Temporal knowledge graph question Answering (RTA). First, in the question understanding stage, our model extracts context information to select topic entities of the given question, which can effectively deal with scenarios involving multiple entities in complex temporal questions. Furthermore, reasoning complexity escalates significantly with complex temporal questions, as varying timestamps alter the relations between entities. Therefore, we introduce reinforcement learning into the reasoning process. In the policy network, a dynamic path-matching module is specifically included to aggregate the features of relational paths to effectively capture the dynamic changes of the relations between entities on the reasoning paths. At the same time, the weights are calculated to obtain the degree of attention of each candidate action. Then the score of each candidate action is obtained through a weighted summation mechanism which helps the agent learn the optimal path reasoning policy for effective exploration. Finally, we evaluate our method on the CRONQUESTIONS dataset and validate its superiority over all baseline methods. Specifically, our approach proves effective in handling complex temporal questions.
时间知识图问题回答(TKGQA)是一项关键的研究,其重点是在相应的时间知识图中找到一个实体或时间戳来回答时间问题。目前,时间型KGQA任务面临的主要挑战是回答复杂的时间问题,通常需要在TKG中进行复杂的多跳时间推理。在本文中,我们提出了一种用于TKGQA任务的方法,称为强化学习时态知识图问答(RTA)。首先,在问题理解阶段,我们的模型提取上下文信息,选择给定问题的主题实体,可以有效地处理复杂时态问题中涉及多个实体的场景。此外,随着时间戳的变化,实体之间的关系也会发生变化,推理的复杂性会随着复杂的时间问题而显著增加。因此,我们将强化学习引入到推理过程中。在策略网络中,专门引入动态路径匹配模块,对关系路径的特征进行聚合,有效捕捉推理路径上实体间关系的动态变化。同时,对权重进行计算,得到各候选动作的关注程度。然后通过加权求和机制获得每个候选动作的得分,帮助智能体学习最优路径推理策略进行有效探索。最后,我们在CRONQUESTIONS数据集上评估了我们的方法,并验证了它比所有基线方法的优越性。具体来说,我们的方法在处理复杂的时间问题时被证明是有效的。
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引用次数: 0
Distributed continuous-time algorithm for nonsmooth aggregative optimization over weight-unbalanced digraphs 权不平衡有向图上非光滑聚合优化的分布式连续时间算法
IF 5.5 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2024-11-28 DOI: 10.1016/j.neucom.2024.129022
Zheng Zhang , Guang-Hong Yang
This paper studies the problem of distributed continuous-time aggregative optimization with set constraints under a weight-unbalanced digraph, where the nonsmooth objective function of each agent relies both on its own decision and on the aggregation of all agents’ decisions. To eliminate the impact of unbalanced digraphs, a consensus-based estimator that tracks the aggregation information is designed through a gradient rescaling technique. Considering that cost functions are nondifferentiable in many scenarios, such as electric power management that takes price caps into account, a novel distributed continuous-time optimization algorithm via generalized gradient is presented in a two-time scale. Moreover, the convergence of the algorithm is established through nonsmooth analysis and singular perturbation theory. Compared to the existing results, which depend on undirected graphs, the proposed strategy is applicable to general digraphs, which may be weight-unbalanced. Further, the assumption on the differentiability of objective functions is relaxed. Finally, two numerical examples are provided to verify the findings.
研究了权不平衡有向图下具有集合约束的分布式连续时间聚合优化问题,其中每个智能体的非光滑目标函数既依赖于其自身的决策,也依赖于所有智能体决策的集合。为了消除不平衡有向图的影响,设计了一个基于共识的估计器,通过梯度重缩放技术跟踪聚合信息。针对成本函数不可微的特点,提出了一种基于广义梯度的双时间尺度分布式连续时间优化算法。通过非光滑分析和奇异摄动理论证明了算法的收敛性。与现有的依赖于无向图的结果相比,该策略适用于可能存在权重不平衡的一般有向图。进一步放宽了对目标函数可微性的假设。最后,给出了两个数值算例来验证研究结果。
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引用次数: 0
An adaptation of hybrid binary optimization algorithms for medical image feature selection in neural network for classification of breast cancer 基于混合二值优化算法的医学图像特征选择神经网络乳腺癌分类
IF 5.5 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2024-11-28 DOI: 10.1016/j.neucom.2024.129018
Olaide N. Oyelade , Enesi Femi Aminu , Hui Wang , Karen Rafferty
The performance of neural network is largely dependent on their capability to extract very discriminant features supporting the characterization of abnormalities in the medical image. Several benchmark architectures have been proposed and the use of transfer learning has further made these architectures return good performances. Study has shown that the use of optimization algorithms for selection of relevant features has improved classifiers. However continuous optimization algorithms have mostly been used though it allows variables to take value within a range of values. The advantage of binary optimization algorithms is that it allows variables to be assigned only two states, and this have been sparsely applied to medical image feature optimization. This study therefore proposes hybrid binary optimization algorithms to efficiently identify optimal features subset in medical image feature sets. The binary dwarf mongoose optimizer (BDMO) and the particle swarm optimizer (PSO) were hybridized with the binary Ebola optimization search algorithm (BEOSA) on new nested transfer functions. Medical images passed through convolutional neural networks (CNN) returns extracted features into a continuous space which are piped through these new hybrid binary optimizers. Features in continuous space a mapped into binary space for optimization, and then mapped back into the continuous space for classification. Experimentation was conducted on medical image samples using the Curated Breast Imaging Subset of Digital Database for Screening Mammography (DDSM+CBIS). Results obtained from the evaluation of the hybrid binary optimization methods showed that they yielded outstanding classification accuracy, fitness, and cost function values of 0.965, 0.021 and 0.943. To investigate the statistical significance of the hybrid binary methods, the analysis of variance (ANOVA) test was conducted based on the two-factor analysis on the classification accuracy, fitness, and cost metrics. Furthermore, results returned from application of the binary hybrid methods medical image analysis showed classification accuracy of 0.8286, precision of 0.97, recall of 0.83, and F1-score of 0.99, AUC of 0.8291. Findings from the study showed that contrary to the popular approach of using continuous metaheuristic algorithms for feature selection problem, the binary metaheuristic algorithms are well suitable for handling the challenge. Complete source code can be accessed from: https://github.com/NathanielOy/hybridBinaryAlgorithm4FeatureSelection
神经网络的性能在很大程度上取决于它们提取非常有区别的特征的能力,这些特征支持医学图像中异常的表征。已经提出了几种基准架构,并且迁移学习的使用进一步使这些架构返回良好的性能。研究表明,使用优化算法来选择相关特征可以改进分类器。然而,连续优化算法大多被使用,尽管它允许变量在一定范围内取值。二元优化算法的优点是它允许变量只被分配两种状态,这已经被稀疏地应用于医学图像特征优化。因此,本研究提出混合二值优化算法来有效地识别医学图像特征集中的最优特征子集。将二元矮猫鼬优化器(BDMO)和粒子群优化器(PSO)在新的嵌套传递函数上与二元埃博拉优化搜索算法(BEOSA)进行杂交。医学图像通过卷积神经网络(CNN)将提取的特征返回到连续空间中,该空间通过这些新的混合二进制优化器进行管道传输。特征在连续空间中先映射到二值空间进行优化,然后再映射回连续空间进行分类。实验采用乳腺造影筛查数字数据库(DDSM+CBIS)的精选乳腺成像子集对医学图像样本进行。对混合二元优化方法的评价结果表明,它们的分类精度、适应度和代价函数值分别为0.965、0.021和0.943。为了检验混合二元方法的统计显著性,在对分类精度、适应度和成本指标进行双因素分析的基础上进行方差分析(ANOVA)检验。应用二元混合方法进行医学图像分析,分类准确率为0.8286,精密度为0.97,召回率为0.83,f1评分为0.99,AUC为0.8291。研究结果表明,与使用连续元启发式算法解决特征选择问题的流行方法相反,二元元启发式算法非常适合处理这一挑战。完整的源代码可以访问:https://github.com/NathanielOy/hybridBinaryAlgorithm4FeatureSelection
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