彩色图像流中的不确定性对分类模型的有害影响

Syed Muslim Jameel, M. Hashmani, Hitham Al Hussain, M. Rehman, Arif Budiman
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引用次数: 1

摘要

图像分类(IC)在人工智能(AI)的其他领域中最为突出。集成电路主要在金融、市场营销、健康、工业自动化、教育、安全和安保等各种应用领域积极参与社会的发展。通常,IC模型接受图像输入数据,并根据所需的应用程序任务调整自身,并相应地进行分类。在各种图像类别中,彩色图像类别由于能够捕获更多的细节而表现得更好,而这些细节对于分类是必不可少的。然而,现代世界需要实时或在线图像分类,这涉及到图像流。图像流中极有可能的不确定性是由于非平稳环境造成的,例如,某些特征或类边界在一次步骤中有效,但在另一个时间步骤中并不足够。图像流中的这些不确定性对集成电路模型有有害的影响,这会导致精度方面的性能下降或使集成电路模型无法进一步使用。因此,为了克服这些问题,IC模型需要适应图像流中不确定性引起的变化。本文着重于理解彩色图像流中这种不确定性的可能情况,调查了由于彩色图像流变化而产生的有害影响,并提供了可能的缓解方法来克服IC模型中的问题。本研究的贡献是朝着自适应模型发展的第一步,以减轻彩色图像流中不确定性的有害影响。这种模式将使许多应用领域受益,并将直接为社会的日常生活做出贡献。
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Deleterious Effects of Uncertainty in Color Imagery Streams on Classification Models
Image Classification (IC) is most prominent among other Artificial Intelligence (AI) domains. Mainly, IC participates rigorously for the development of society in a variety of application areas such as finance, marketing, health, industrial automation, education, and safety and security. Typically, an IC model takes image input data and tunes itself as per the required application task and classify accordingly. Among the various categories of images, color image category is better due to the capability of capturing more details, which are essential for classification purpose. However, the modern world demands Realtime or online image classification, which involves Imagery Streams. The highly likely uncertainty in Imagery Streams is due to non-stationary environment, for example, certain features or class boundaries which are valid at one-time step are not adequate for another time step. These uncertainties in Imagery Streams have deleterious effects on IC models, which causes performance degradation in terms of accuracy or make IC models, not in further use. Therefore, to overcome these issues, IC models need to adapt to changes caused by uncertainties in Imagery Streams. This paper focuses on the understanding the possible scenarios of such uncertainties in Color Imagery Streams, investigates the deleterious effects due to changes in Color Imagery Streams and provides the possible mitigation approach to overcome the issues in IC models. The contribution of this research is the first step towards an adaptive model development to mitigate the deleterious effects of uncertainty in Color Imagery Streams. This model will benefit many application areas and will directly contribute to the daily life of a society.
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