FASTensor: A tensor framework for spatiotemporal description

V. F. Mota, J. A. D. Santos, A. Araújo
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Abstract

Spatiotemporal description is a research field with applications in various areas such as video indexing, surveillance, human-computer interfaces, among others. Big Data problems in large databases are now being treated with Deep Learning tools, however we still have room for improvement in spatiotemporal handcraft description. Moreover, we still have problems that involve small data in which data augmentation and other techniques are not valid. The main contribution of this Ph.D. Thesis 1 is the development of a framework for spatiotemporal representation using orientation tensors enabling dimension reduction and invariance. This is a multipurpose framework called Features As Spatiotemporal Tensors (FASTensor). We evaluate this framework in three different applications: Human Action recognition, Video Pornography classification and Cancer Cell classification. The latter one is also a contribution of this work, since we introduce a new dataset called Melanoma Cancer Cell dataset (MCC). It is a small data that cannot be artificially augmented due the difficulty of extraction and the nature of motion. The results were competitive, while also being fast and simple to implement. Finally, our results in the MCC dataset can be used in other cancer cell treatment analysis.
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fastsensor:用于时空描述的张量框架
时空描述是一个广泛应用于视频索引、监控、人机界面等领域的研究领域。大型数据库中的大数据问题现在正在用深度学习工具来处理,但是我们在时空手工描述方面仍有改进的空间。此外,我们仍然存在涉及小数据的问题,其中数据增强和其他技术无效。本博士论文1的主要贡献是开发了一个使用方向张量实现降维和不变性的时空表示框架。这是一个多用途框架,称为特征时空张量(FASTensor)。我们在三个不同的应用中评估了这个框架:人类动作识别,视频色情分类和癌细胞分类。后者也是这项工作的一个贡献,因为我们引入了一个新的数据集,称为黑色素瘤癌细胞数据集(MCC)。这是一个小数据,由于提取的难度和运动的性质,无法人为地增强。结果是有竞争力的,同时也快速和简单的实施。最后,我们在MCC数据集中的结果可以用于其他癌细胞治疗分析。
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