通过基于 CNN 的分类解码和保护印尼标志性建筑 Keris

Aji Prasetya Wibawa , Anik Nur Handayani , Mochammad Rafli Muharom Rukantala , Muhammad Ferdyan , Lalu Agung Purnama Budi , Agung Bella Putra Utama , Felix Andika Dwiyanto
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摘要

本研究采用先进的卷积神经网络 (CNN) 作为识别这些著名印尼匕首中固有的微妙模式和文化特征的有效技术,对 Keris 分类领域进行了探索。这项研究在识别 Pamor、Dhapur 和 Tangguh 类别方面取得了令人鼓舞的成果。然而,认识和面对与这项研究相关的固有制约因素至关重要。这项研究的主要限制因素涉及数据的多样性、标记的准确性、模型的可推广性以及伦理方面的考虑。要获得有效涵盖所有 Keris 模式的综合数据集是一个重大障碍。此外,由于 Keris 分类的主观性可能会影响标注的准确性,因此仔细关注标注的准确性至关重要。令人担忧的重要问题在于,如何保证模型对以前从未遇到过的 Keris 图像进行归纳的能力,以及理解和解释其决策过程的能力。要解决与文化敏感性相关的伦理问题,以及在文化遗产领域人工智能成果可能被滥用的问题,就必须认真建立伦理框架。尽管如此,这些制约因素为未来调查和改进的潜在领域提供了重要的视角。未来的工作可以优先考虑增加和扩大数据集、促进与文化领域专家的合作、提高模型的可解释性以及有效解决伦理问题。本研究不仅展示了在文化保护领域扩展人工智能的潜力,还有助于更深刻地理解和认识克里丝所蕴含的复杂艺术性和历史意义。
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Decoding and preserving Indonesia's iconic Keris via A CNN-based classification

The present study explores the domain of Keris classification by employing advanced Convolutional Neural Networks (CNNs) as a potent technique for identifying subtle patterns and cultural characteristics inherent in these renowned Indonesian daggers. The study has presented encouraging findings about the identification of Pamor, Dhapur, and Tangguh categories. However, it is crucial to recognise and confront the inherent constraints associated with this research. The key constraints of the study pertain to the diversity of data, accuracy of labeling, generalizability of the model, and ethical considerations. The acquisition of a comprehensive dataset that effectively encompasses the whole range of Keris patterns offers a significant obstacle. Furthermore, it is crucial to pay careful attention to the accuracy of labeling, since it can be influenced by the subjective character of Keris classification. The important worry lies in guaranteeing the model's capacity to generalise to Keris images that have not been previously encountered, as well as its ability to comprehend and explain its decision-making process. The careful establishment of ethical frameworks is necessary to address ethical problems related to cultural sensitivity and the potential misuse of AI outputs in the realm of cultural heritage. Nevertheless, these constraints offer significant perspectives on potential areas for future investigation and enhancement. Future endeavours may prioritise the augmentation and broadening of the dataset, fostering collaboration with specialists in cultural domains, improving the interpretability of the model, and effectively addressing ethical considerations. The present study not only exhibits potential for expanding artificial intelligence in the domain of cultural preservation, but also contributes to a more profound understanding and recognition of the complex artistry and historical significance encapsulated within the Keris.

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