encoding

编码
  • 文章类型: Journal Article
    深度学习技术的最新发展吸引了人们对脑电图(EEG)信号的解码和分类的关注。尽管在EEG信号中利用不同的特征进行了一些努力,一个重要的研究挑战是结合局部和全局特征使用时间相关特征。已经进行了一些尝试来重新建模深度学习卷积神经网络(CNN)以捕获时间依赖性信息。这些功能通常是手工制作的功能,例如功率比,或将数据拆分为与特定属性相关的较小尺寸窗口,例如在300ms处的峰值。然而,这些方法部分解决了这个问题,但同时阻碍了CNN从数据中可能存在的未知信息中学习的能力。其他方法,像递归神经网络,非常适合在存在无关的顺序数据的情况下从EEG信号中学习时间相关信息。为了解决这个问题,我们提出了一个编码内核(EnK),一种新颖的时间编码方法,它在CNN中的垂直卷积运算期间唯一地引入时间分解信息。编码的信息使CNN除了学习局部和全局特征之外,还可以学习与时间相关的特征。我们对几个EEG数据集进行了广泛的实验-物理的人-机器人协作,P300视觉诱发电位,运动图像,运动相关的皮质电位,和使用生理信号进行情绪分析的数据集。EnK优于现有技术,与基础模型相比,所有数据集的平均值相比,均方误差(MSE)降低了6.5%,F1得分提高了9.5%。这些结果支持我们的方法,并显示出改善生理和非生理数据性能的高潜力。此外,EnK几乎可以以最小的努力应用于任何深度学习架构。
    A recent development in deep learning techniques has attracted attention to the decoding and classification of electroencephalogram (EEG) signals. Despite several efforts to utilize different features in EEG signals, a significant research challenge is using time-dependent features in combination with local and global features. Several attempts have been made to remodel the deep learning convolution neural networks (CNNs) to capture time-dependency information. These features are usually either handcrafted features, such as power ratios, or splitting data into smaller-sized windows related to specific properties, such as a peak at 300 ms. However, these approaches partially solve the problem but simultaneously hinder CNNs\' capability to learn from unknown information that might be present in the data. Other approaches, like recurrent neural networks, are very suitable for learning time-dependent information from EEG signals in the presence of unrelated sequential data. To solve this, we have proposed an encoding kernel (EnK), a novel time-encoding approach, which uniquely introduces time decomposition information during the vertical convolution operation in CNNs. The encoded information lets CNNs learn time-dependent features in addition to local and global features. We performed extensive experiments on several EEG data sets-physical human-robot collaborations, P300 visual-evoked potentials, motor imagery, movement-related cortical potentials, and the Dataset for Emotion Analysis Using Physiological Signals. The EnK outperforms the state of the art with an up to 6.5% reduction in mean squared error (MSE) and a 9.5% improvement in F1-scores compared to the average for all data sets together compared to base models. These results support our approach and show a high potential to improve the performance of physiological and non-physiological data. Moreover, the EnK can be applied to virtually any deep learning architecture with minimal effort.
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  • 文章类型: Journal Article
    处理级别(LOP)框架,提出深加工产生优异的保留率,为记忆研究提供了重要的范式和改进学习的实用手段。然而,可用的处理级别文献侧重于即时内存性能。在LOP框架内假设,深加工将导致比浅加工更慢的遗忘。然而,目前还不清楚,或者如何,处理的初始水平会影响较长保留间隔的遗忘斜率。目前的三个实验旨在探索以质量不同的LOP编码的项目是否以不同的速率被遗忘。在前两个实验中,在深度和浅层条件下,在编码的参与者内部操纵处理深度(语义与实验1中的押韵判断;语义与实验2)中的辅音元音模式决定。在学习后立即和30分钟时,在参与者之间测量识别准确性(dprime)2-h,24小时的延迟。第三个实验采用了参与者之间的设计,对比语义和语音(韵律)处理后的遗忘率,30-min,2-h,和6小时的延迟。三个实验的结果一致表明,处理级别对即时性能的影响很大,对延迟识别的影响大小为中到大级别,但至关重要的是没有LOP×延迟群相互作用。对保留曲线的分析显示,深处理和浅处理的遗忘斜率之间没有显着差异。这些结果表明,遗忘率与处理级别操纵的定性不同的编码操作无关。
    The levels-of-processing (LOP) framework, proposing that deep processing yields superior retention, has provided an important paradigm for memory research and a practical means of improving learning. However, the available levels-of-processing literature focuses on immediate memory performance. It is assumed within the LOP framework that deep processing will lead to slower forgetting than will shallow processing. However, it is unclear whether, or how, the initial level of processing affects the forgetting slopes over longer retention intervals. The present three experiments were designed to explore whether items encoded at qualitatively different LOP are forgotten at different rates. In the first two experiments, depth of processing was manipulated within-participants at encoding under deep and shallow conditions (semantic vs. rhyme judgement in Experiment 1; semantic vs. consonant-vowel pattern decision in Experiment 2). Recognition accuracy (d prime) was measured between-participants immediately after learning and at 30-min, 2-h, and 24-h delays. The third experiment employed a between-participants design, contrasting the rates of forgetting following semantic and phonological (rhyme) processing at immediate, 30-min, 2-h, and 6-h delays. Results from the three experiments consistently demonstrated a large effect size of levels of processing on immediate performance and a medium-to-large level effect size on delayed recognition, but crucially no LOP × delay group interaction. Analysis of the retention curves revealed no significant differences between the slopes of forgetting for deep and shallow processing. These results suggest that the rates of forgetting are independent of the qualitatively distinct encoding operations manipulated by levels of processing.
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  • 文章类型: Journal Article
    在海马中观察到嵌套在θ节律中的伽马振荡,假设在顺序情景记忆中发挥作用,即,记忆和检索及时展开的事件。在这项工作中,我们提出了一个基于神经质量的原始神经计算模型,它通过利用theta-gamma代码来模拟海马中事件序列的编码以及随后的检索。该模型基于三层结构,其中各个单元以伽玛节奏振荡,并编码情节的各个特征。第一层(前额叶皮层中的工作记忆)在记忆中保持提示,直到出现新信号。第二层(CA3单元)实现自动关联存储器,利用兴奋性和抑制性塑料突触从单个特征恢复整个发作。该层中的单位被来自外部来源(隔膜或Papez回路)的theta节律抑制。第三层(CA1单元)与上一层实现异质关联网,能够从第一个事件中恢复一系列事件。在编码阶段,模拟高乙酰胆碱水平,网络使用Hebbian(同步)和反Hebbian(去同步)规则进行训练。在检索过程中(低乙酰胆碱),网络可以使用嵌套在theta节奏内的伽马振荡从初始线索中正确恢复序列。此外,在高噪音中,与环境隔离的网络模拟了一种精神错乱的状态,随机复制以前的序列。有趣的是,在模拟睡眠的状态下,随着噪音的增加和突触的减少,网络可以通过创造性地组合序列来“梦想”,利用不同情节共有的特征。最后,非理性行为(错误叠加各种情节中的特征,像“妄想”)发生在快速抑制性突触的病理性减少之后。该模型可以代表一种简单而创新的工具,以帮助机械地理解不同精神状态下的theta-gamma代码。
    Gamma oscillations nested in a theta rhythm are observed in the hippocampus, where are assumed to play a role in sequential episodic memory, i.e., memorization and retrieval of events that unfold in time. In this work, we present an original neurocomputational model based on neural masses, which simulates the encoding of sequences of events in the hippocampus and subsequent retrieval by exploiting the theta-gamma code. The model is based on a three-layer structure in which individual Units oscillate with a gamma rhythm and code for individual features of an episode. The first layer (working memory in the prefrontal cortex) maintains a cue in memory until a new signal is presented. The second layer (CA3 cells) implements an auto-associative memory, exploiting excitatory and inhibitory plastic synapses to recover an entire episode from a single feature. Units in this layer are disinhibited by a theta rhythm from an external source (septum or Papez circuit). The third layer (CA1 cells) implements a hetero-associative net with the previous layer, able to recover a sequence of episodes from the first one. During an encoding phase, simulating high-acetylcholine levels, the network is trained with Hebbian (synchronizing) and anti-Hebbian (desynchronizing) rules. During retrieval (low-acetylcholine), the network can correctly recover sequences from an initial cue using gamma oscillations nested inside the theta rhythm. Moreover, in high noise, the network isolated from the environment simulates a mind-wandering condition, randomly replicating previous sequences. Interestingly, in a state simulating sleep, with increased noise and reduced synapses, the network can \"dream\" by creatively combining sequences, exploiting features shared by different episodes. Finally, an irrational behavior (erroneous superimposition of features in various episodes, like \"delusion\") occurs after pathological-like reduction in fast inhibitory synapses. The model can represent a straightforward and innovative tool to help mechanistically understand the theta-gamma code in different mental states.
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  • 文章类型: Journal Article
    这篇评论批判性地审查了瞳孔测量对记忆研究的贡献,主要集中在增强我们对记忆编码和检索机制的理解上,主要研究识别记忆范式。证据支持瞳孔反应和记忆形成之间的密切联系,特别受检测到的新奇类型的影响。该建议调和了文献中有关瞳孔反应模式的不一致之处,这些模式可以预测成功的记忆形成。并强调了编码机制的重要意义。该评论还讨论了瞳孔的新旧效应及其在回忆和反映与熟悉或新颖性检测相关的大脑信号中的意义。此外,评估瞳孔反应作为真实记忆信号和区分真实记忆和错误记忆的能力。这些证据提供了对错误记忆性质的见解,并提供了对记忆扭曲所涉及的认知机制的新理解。当与严格的实验设计相结合时,瞳孔测量可以显着完善记忆编码和检索的理论模型。此外,将瞳孔测量与神经影像学和药物干预相结合被认为是未来研究的有希望的方向。
    This review critically examines the contributions of pupillometry to memory research, primarily focusing on its enhancement of our understanding of memory encoding and retrieval mechanisms mainly investigated with the recognition memory paradigm. The evidence supports a close link between pupil response and memory formation, notably influenced by the type of novelty detected. This proposal reconciles inconsistencies in the literature regarding pupil response patterns that may predict successful memory formation, and highlights important implications for encoding mechanisms. The review also discusses the pupil old/new effect and its significance in the context of recollection and in reflecting brain signals related to familiarity or novelty detection. Additionally, the capacity of pupil response to serve as a true memory signal and to distinguish between true and false memories is evaluated. The evidence provides insights into the nature of false memories and offers a novel understanding of the cognitive mechanisms involved in memory distortions. When integrated with rigorous experimental design, pupillometry can significantly refine theoretical models of memory encoding and retrieval. Furthermore, combining pupillometry with neuroimaging and pharmacological interventions is identified as a promising direction for future research.
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  • 文章类型: Journal Article
    通常声称概率期望直接影响视觉感知,没有选择性注意的调解。然而,这些说法有争议,众所周知,期望和注意力的影响很难通过实验分离。在这项研究中,我们使用了一种新的方法来将期望与注意力分开。在四个实验中(N=60),参与者在快速连续视觉呈现(RSVP)流中搜索目标,并且必须识别由低级提示(颜色或形状)定义的数字或字母.对目标字母数字类别的期望被概率操纵。由于类别成员资格是一个高级功能,并且由于目标嵌入了共享其类别的许多干扰者中,预期类别的目标不应比意外类别的目标引起更多关注。在第一个实验中,相对于意外类别的目标,这些目标更有可能被识别.重要的是,在下面的实验中,我们还纳入了注意引导和参与的行为和电生理指标.这使我们能够检查期望是否也调节了这些或更早的注意过程。结果表明,基于类别的期望对注意力没有调节作用,并且仅在稍后的编码相关阶段影响处理。还排除了重复启动或反应偏差方面对期望效果的替代解释。这些观察结果为独立于注意力的期望对感知的直接影响提供了新的证据。我们建议期望可以调整编码期望一致信息所需的阈值,从而影响目标对象在工作存储器中编码的速度。
    It is often claimed that probabilistic expectations affect visual perception directly, without mediation by selective attention. However, these claims have been disputed, as effects of expectation and attention are notoriously hard to dissociate experimentally. In this study, we used a new approach to separate expectations from attention. In four experiments (N = 60), participants searched for a target in a rapid serial visual presentation (RSVP) stream and had to identify a digit or a letter defined by a low-level cue (colour or shape). Expectations about the target\'s alphanumeric category were probabilistically manipulated. Since category membership is a high-level feature and since the target was embedded among many distractors that shared its category, targets from the expected category should not attract attention more than targets from the unexpected category. In the first experiment, these targets were more likely to be identified relative to targets from the unexpected category. Importantly, in the following experiments, we also included behavioural and electrophysiological indices of attentional guidance and engagement. This allowed us to examine whether expectations also modulated these or earlier attentional processes. Results showed that category-based expectations had no modulatory effects on attention, and only affected processing at later encoding-related stages. Alternative interpretation of expectation effects in terms of repetition priming or response bias were also ruled out. These observations provide new evidence for direct attention-independent expectation effects on perception. We suggest that expectations can adjust the threshold required for encoding expectations-congruent information, thereby affecting the speed with which target objects are encoded in working memory.
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  • 文章类型: Journal Article
    我们对过去亲身经历的自传体事件的记忆在治疗中起着重要的作用,不管提出什么问题,诊断或治疗方式。这里,我们总结了自传记忆能力如何影响我们的心理健康以及这与心理健康问题治疗的相关性的证据。然后,我们引导读者通过原则和策略来优化治疗中的自传记忆。我们将这些建议纳入研究中,以用于改善自传体记忆的独立干预措施,以及如何支持治疗性记忆的形成和检索的研究。为临床医生提供了一些选择,以指导客户改善治疗中自传体记忆的检索,改善治疗经验本身的自传记忆,并改善了自传记忆,可以忍受后处理。我们还提供工作表,供临床医生在治疗中使用。
    Our memories for past personally experienced autobiographical events play an important role in therapy, irrespective of presenting issue, diagnoses or therapeutic modality. Here, we summarise evidence for how autobiographical memory abilities can influence our mental health and the relevance of this for the treatment of mental health problems. We then guide the reader through principles and strategies for optimising autobiographical memory within treatment. We ground these recommendations within research for stand-alone interventions for improving autobiographical memory and from studies of how to support the formation and retrieval of therapeutic memories. Options are given for clinicians to guide clients in improving retrieval of autobiographical memories within treatment, for improving autobiographical memory for the therapeutic experience itself, and for creating improvements in autobiographical memory that endure post-treatment. We also provide worksheets for clinicians to use within treatment.
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  • 文章类型: Journal Article
    为了导航他们的环境,昆虫需要跟踪它们的方向。先前的工作表明,昆虫将其头部方向编码为围绕八列结构排列的神经元环的正弦活动模式。然而,尚不清楚这种头部方向的正弦编码是否只是进化的巧合,或者它是否提供了特定的功能优势。为了解决这个问题,我们建立了方向编码的基本数学要求,并表明它可以由许多电路执行,都有不同的活动模式。在这些活动模式中,我们证明了正弦是最有噪声弹性的,但仅当与编码神经元之间的正弦连接模式耦合时。我们将这种预测的最佳连接模式与蝗虫和果蝇头部方向回路的解剖数据进行比较,发现我们的理论与实验证据一致。此外,我们证明了我们预测的电路可以使用Hebbian可塑性出现,这意味着神经连接不需要在昆虫的遗传程序中明确编码,而是可以在发育过程中出现。最后,我们在我们的理论中说明了,跨多个昆虫物种的头部方向回路的八列组织的一致存在不是偶然的人为现象,而是可以用基本的进化原理来解释。
    昆虫,包括果蝇和蝗虫,在整个环境中寻找食物,彼此互动或逃避危险。导航他们的周围环境,昆虫需要能够跟踪它们的方向。这种跟踪是通过视觉提示和整合有关飞行时运动的信息来实现的,这样他们就可以知道他们的头部面向哪个方向。负责中继有关头部方向(也称为标题)的信息的一组神经元在由八列细胞组成的环中连接在一起。先前的研究表明,整个神经元环的活动水平类似于正弦曲线形状:一条平滑的曲线,具有一个峰值,编码动物的航向。这个八柱环下游的神经元,传递速度信息,也显示激活的这种正弦模式。Aceituno,Dall'Osto和Pisokas想了解这种正弦模式是否是进化的巧合,或者它是否为昆虫提供了特殊的优势。为了回答这个问题,他们建立了八列环中神经元编码动物航向信息所需的数学标准。这表明,这些条件可以通过许多不同的激活模式来满足,不仅仅是正弦形状。然而,Aceituno,Dall'Osto和Pisokas表明,正弦形状对可能影响编码信息的神经元活动的变化最有弹性。进一步的实验表明,只有当电路中的神经元以某种模式连接在一起时,这种弹性才会发生。Aceituno,Dall'Osto和Pisokas然后将该电路与蝗虫和果蝇的实验数据进行了比较,发现两种昆虫都表现出预测的连接模式。他们还发现,动物不必天生具有这种神经元连接模式,但可以在他们的一生中发展它。这些发现为昆虫在飞行时如何传递有关头部方向的信息提供了新的见解。他们认为,负责编码头部方向的神经元回路的结构不是偶然形成的,而是由于其提供的进化优势而产生的。
    To navigate their environment, insects need to keep track of their orientation. Previous work has shown that insects encode their head direction as a sinusoidal activity pattern around a ring of neurons arranged in an eight-column structure. However, it is unclear whether this sinusoidal encoding of head direction is just an evolutionary coincidence or if it offers a particular functional advantage. To address this question, we establish the basic mathematical requirements for direction encoding and show that it can be performed by many circuits, all with different activity patterns. Among these activity patterns, we prove that the sinusoidal one is the most noise-resilient, but only when coupled with a sinusoidal connectivity pattern between the encoding neurons. We compare this predicted optimal connectivity pattern with anatomical data from the head direction circuits of the locust and the fruit fly, finding that our theory agrees with experimental evidence. Furthermore, we demonstrate that our predicted circuit can emerge using Hebbian plasticity, implying that the neural connectivity does not need to be explicitly encoded in the genetic program of the insect but rather can emerge during development. Finally, we illustrate that in our theory, the consistent presence of the eight-column organisation of head direction circuits across multiple insect species is not a chance artefact but instead can be explained by basic evolutionary principles.
    Insects, including fruit flies and locusts, move throughout their environment to find food, interact with each other or escape danger. To navigate their surroundings, insects need to be able to keep track of their orientation. This tracking is achieved through visual cues and integrating information about their movements whilst flying so they know which direction their head is facing. The set of neurons responsible for relaying information about the direction of the head (also known as heading) are connected together in a ring made up of eight columns of cells. Previous studies showed that the level of activity across this ring of neurons resembles a sinusoid shape: a smooth curve with one peak which encodes the animal’s heading. Neurons downstream from this eight-column ring, which relay velocity information, also display this sinusoidal pattern of activation. Aceituno, Dall’Osto and Pisokas wanted to understand whether this sinusoidal pattern was an evolutionary coincidence, or whether it offers a particular advantage to insects. To answer this question, they established the mathematical criteria required for neurons in the eight-column ring to encode information about the heading of the animal. This revealed that these conditions can be satisfied by many different patterns of activation, not just the sinusoidal shape. However, Aceituno, Dall’Osto and Pisokas show that the sinusoidal shape is the most resilient to variations in neuronal activity which may impact the encoded information. Further experiments revealed that this resilience only occurred if neurons in the circuit were connected together in a certain pattern. Aceituno, Dall’Osto and Pisokas then compared this circuit with experimental data from locusts and fruit flies and found that both insects exhibit the predicted connection pattern. They also discovered that animals do not have to be born with this neuronal connection pattern, but can develop it during their lifetime. These findings provide fresh insights into how insects relay information about the direction of their head as they fly. They suggest that the structure of the neuronal circuit responsible for encoding head direction was not formed by chance but instead arose due to the evolutionary benefits it provided.
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  • 文章类型: Journal Article
    在复杂的视觉图像消失后的几百毫秒内探测其记忆显示,与探测延迟一秒钟相比,召回的保真度要高得多。经典解释,前者进入详细但快速衰减的视觉感官或“标志性”记忆(IM),而后者依赖于容量有限但相对稳定的视觉工作记忆(VWM)。虽然已经独立地对标志性衰减和VWM容量进行了广泛的研究,目前,没有一个单一的框架定量地解释了这些时间尺度上的记忆保真度的动态。这里,我们用时间维度扩展了VWM的平稳神经种群模型,结合快速感官驱动的活动积累,编码记忆中的每个视觉特征,以及内部错误的较慢累积,导致记忆特征随时间随机漂移。而不是促进从独立的感官商店读出,通过取消多个项目竞争代表时对VWM信号强度施加的有效限制,早期线索有利于召回,允许对提示项目的记忆补充来自腐烂的感官痕迹的信息。人类回忆动态的经验测量验证了这些预测,同时排除了替代模型架构。一个关键的结论是,传统上用来区分IM和VWM的容量差异实际上取决于单个资源受限的WM存储。
    Probing memory of a complex visual image within a few hundred milliseconds after its disappearance reveals significantly greater fidelity of recall than if the probe is delayed by as little as a second. Classically interpreted, the former taps into a detailed but rapidly decaying visual sensory or \'iconic\' memory (IM), while the latter relies on capacity-limited but comparatively stable visual working memory (VWM). While iconic decay and VWM capacity have been extensively studied independently, currently no single framework quantitatively accounts for the dynamics of memory fidelity over these time scales. Here, we extend a stationary neural population model of VWM with a temporal dimension, incorporating rapid sensory-driven accumulation of activity encoding each visual feature in memory, and a slower accumulation of internal error that causes memorized features to randomly drift over time. Instead of facilitating read-out from an independent sensory store, an early cue benefits recall by lifting the effective limit on VWM signal strength imposed when multiple items compete for representation, allowing memory for the cued item to be supplemented with information from the decaying sensory trace. Empirical measurements of human recall dynamics validate these predictions while excluding alternative model architectures. A key conclusion is that differences in capacity classically thought to distinguish IM and VWM are in fact contingent upon a single resource-limited WM store.
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  • 文章类型: Journal Article
    机器学习是一种有价值的工具,可以加速占据组合化学空间的材料的发现和设计。然而,当需要大量资源来表征或模拟候选结构时,对大量训练数据的先决条件可能是令人望而却步的。最近的结果表明,复杂材料的无结构编码,完全基于化学成分,可以克服这一障碍,并在无监督学习任务中表现良好。在这项研究中,我们将这种探索扩展到监督分类,并展示了无结构编码如何准确预测用于电池应用的材料化合物类别,而无需耗时的键合网络测量,晶格或密度。科学贡献:对分类任务中复杂材料的无结构编码的综合评估,包括二进制和多类分离,包括基于不同逻辑函数的三个分类器,测量了四个指标和学习曲线。编码应用于来自计算和实验源的两个数据集,并使用5种方法对结果进行可视化,以证实门捷列夫编码的适用性和优越性。这些方法是通用的,可以使用源软件访问,为了提供简单的,直观和可解释的材料信息学结果,以加速材料设计。
    Machine learning is a valuable tool that can accelerate the discovery and design of materials occupying combinatorial chemical spaces. However, the prerequisite need for vast amounts of training data can be prohibitive when significant resources are needed to characterize or simulate candidate structures. Recent results have shown that structure-free encoding of complex materials, based entirely on chemical compositions, can overcome this impediment and perform well in unsupervised learning tasks. In this study, we extend this exploration to supervised classification, and show how structure-free encoding can accurately predict classes of material compounds for battery applications without time consuming measurement of bonding networks, lattices or densities. SCIENTIFIC CONTRIBUTION: The comprehensive evaluation of structure-free encodings of complex materials in classification tasks, including binary and multi-class separation, inclusive of three classifiers based on different logic function, is measured four metrics and learning curves. The encoding is applied to two data sets from computational and experimental sources, and the outcomes visualised using 5 approaches to confirms the suitability and superiority of Mendeleev encoding. These methods are general and accessible using source software, to provide simple, intuitive and interpretable materials informatics outcomes to accelerate materials design.
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  • 文章类型: Journal Article
    DNA隐写术是一种使用DNA序列安全传输重要数据的技术。它涉及加密和隐藏DNA序列中的消息,以防止未经授权的访问和解码敏感信息。生物识别系统,比如指纹识别和虹膜扫描,用于个人识别。由于生物特征信息如果被泄露就无法改变,确保其安全至关重要。这项研究旨在开发一种安全技术,该技术结合了隐写术和密码术,以在通信过程中保护指纹图像,同时保持机密性。该技术将指纹图像转换为二进制数据,加密它们,并将它们嵌入到DNA序列中。它利用Feistel网络加密过程,以及用于隐藏数据的数学函数和插入技术。所提出的方法提供了一个较低的概率被破解,大量的隐藏位置,和高效的执行时间。四个随机选择的密钥用于隐藏和解码,提供了一个大的关键空间和增强的关键灵敏度。该技术使用NIST统计测试套件进行评估,并与其他研究论文进行比较。它展示了抵御各种攻击的能力,包括已知明文和选择明文攻击。为了增强安全性,在指纹图像中的随机位置引入随机模糊位,增加噪音。然而,重要的是要注意,这种技术仅限于在DNA序列中隐藏小图像,并且无法处理视频,音频,或大图像。
    DNA steganography is a technique for securely transmitting important data using DNA sequences. It involves encrypting and hiding messages within DNA sequences to prevent unauthorized access and decoding of sensitive information. Biometric systems, such as fingerprinting and iris scanning, are used for individual recognition. Since biometric information cannot be changed if compromised, it is essential to ensure its security. This research aims to develop a secure technique that combines steganography and cryptography to protect fingerprint images during communication while maintaining confidentiality. The technique converts fingerprint images into binary data, encrypts them, and embeds them into the DNA sequence. It utilizes the Feistel network encryption process, along with a mathematical function and an insertion technique for hiding the data. The proposed method offers a low probability of being cracked, a high number of hiding positions, and efficient execution times. Four randomly chosen keys are used for hiding and decoding, providing a large key space and enhanced key sensitivity. The technique undergoes evaluation using the NIST statistical test suite and is compared with other research papers. It demonstrates resilience against various attacks, including known-plaintext and chosen-plaintext attacks. To enhance security, random ambiguous bits are introduced at random locations in the fingerprint image, increasing noise. However, it is important to note that this technique is limited to hiding small images within DNA sequences and cannot handle video, audio, or large images.
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