基于CLAHE和机器学习的印度雕塑实体识别

Ayush Dalara, Dr. Sindhu C, R. Vasanth
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引用次数: 1

摘要

雕塑的识别是图像分类领域中最具挑战性的问题之一,因为各种雕塑的设计差异很大。为了对印度实体的雕塑进行分类,我们需要从不同结构方向的多个角度拍摄图像。本研究结合各种算法,根据其特征进行雕塑识别的比较研究。使用SIFT (Scale Invariant Feature Transform)算法寻找检测到的关键点的描述符,并使用“最小键”、“最大键填充”、“平均键填充”、“中位数键填充”和“模式键填充”方法与各种分类器(K-Nearest Neighbors,支持向量机,人工神经网络)配对,以进行效率测试。cnn(卷积神经网络)也进行了相同的测试。模特们接受了不同印度雕塑的训练,这些雕塑来自不同的来源,象征着我们的文化多样性。在人工获取的数据集上进行实验,该数据集由15个不同的雕塑类组成,其中每个雕塑类由150张用于训练的图像和20张用于测试的图像组成。并尝试应用CLAHE(对比度有限自适应直方图均衡化)来提高这些模型的效率。实验显示了这些模型在接受各种雕塑图像表征训练时的表现。对于15个不同的雕塑类,利用CLAHE和CNN模型实现的最大精度是可观的70.66%。而非基于cnn的方法的准确率值不达标。
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Entity Recognition in Indian Sculpture using CLAHE and machine learning
Sculpture recognition is one of the most challenging problems in the image classification field due to the high variations in the design of various sculptures. In order to classify the Indian entity's sculpture, we require images from multiple perspectives with different orientations of the structure. This research conducts a comparative study by combining various algorithms for the purpose of sculpture recognition based on their features. The SIFT (Scale Invariant Feature Transform) algorithm was used to find descriptors for the key points detected and it was paired with various classifiers (K-Nearest Neighbors, Support Vector Machine, Artificial Neural Network) by using the “Min key”, “Max key padding”, “Mean key padding”, “Median key padding” and “Mode key padding” approach for efficiency testing purposes. CNNs (Convolutional Neural Networks) were also tested for the same. The models were trained on various representations of different Indian sculptures, gathered from various sources, signifying our cultural diversity. Experiments were carried out on the manually acquired data set that consists of 15 different sculpture classes, where each sculpture class consists of 150 images for training and 20 for testing. An attempt was also made to increase the efficiency of these models by the application of CLAHE (Contrast Limited Adaptive Histogram Equalization). The experiments showed the performance of these models when they were trained on various representations of sculpture images. For 15 different sculpture classes, the maximum accuracy achieved was a respectable 70.66% utilizing the CLAHE along with the CNN model. However, the accuracy values of non-CNN-based approaches were substandard.
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