使用先进的机器学习来提高监控的准确性

Tripti Meena
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引用次数: 0

摘要

在过去的60年里,机器学习领域的研究增加了,它的应用范围从仅仅让计算机学会玩棋盘游戏扩大到分析大数据。许多算法已经被开发出来,现在被广泛应用于各个领域,从自然语言处理到计算金融,并已被用于商业用途。近年来,机器学习在自动视频监控系统中的应用研究越来越多。这些算法大多假设训练数据和测试数据属于相同的特征空间,具有相同的分布,这可能并不总是正确的。这种约束产生了迁移学习的概念,即使用来自其他相关任务的先验知识。本文旨在提高基于迁移学习的目标分类机器学习技术MKTL框架的效率。它可以应用于自动化视频监控系统中的多类目标分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using advanced ML for improving surveillance accuracy
An increase in research over the past 60 years in the field of machine learning widened its areas of application from merely making computers learn to play board games to analysis of big data. Many algorithms have been developed that are now commonly used in various fields ranging from natural language processing to computational finance and has been brought to use commercially as well. Recently, there has been an increase in research on machine learning application in the area of automated video surveillance systems. Most of these algorithms assume that both the training data and test data belong to same feature space with same distribution which might not always be true. This constraint gave rise to the concept of transfer learning which uses the knowledge from the preoccupied knowledge from other related task. This paper aims at improving the efficiency of a transfer learning based machine learning technique for object classification, MKTL framework. It can be brought to use for multiclass object classification in automated video surveillance systems.
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