用于大规模照片收集应用的多模态非对称自动编码器

Aymen Hamrouni, Hakim Ghazzai, Y. Massoud
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引用次数: 0

摘要

应用程序的大量使用,从配备相机的设备获得的许多照片可以被利用和利用,以实现新兴服务,例如移动众包。这些系统通常以无意的方式收集来自不同异构源(例如物联网设备和人类)的大量图像数据流。由于通信带宽、存储和处理能力的限制和挑战,不选择性地传输所有照片是不明智的,因为大多数照片通常包含重复信息、不准确或只是错误提交。在本文中,我们建议设计一个使用非对称多模态神经网络自编码器的智能图像选择程序,以选择具有高实用覆盖率的多个传入流的照片子集。该系统能够从不断变化的图像流中选择高上下文数据,并确保相关性。该方法使用照片的元数据,如地理位置和时间戳,以及照片的语义来决定哪些照片可以提交,哪些必须丢弃。对两种不同的多模态自编码器架构的仿真结果表明,混合非对称堆叠自编码器方法可以产生比连接输入自编码器更好的结果,同时利用用户端渲染来减少带宽消耗和计算开销。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-modal Asymmetric Autoencoders for Massive Photo Collection Applications
There has been an abundant use of applications where many photos obtained from camera-equipped devices can be leveraged and exploited to enable emerging services, e.g., mobile crowdsourcing. These systems usually collect a large data stream of images coming from different heterogeneous sources (e.g, IoT devices and humans) in an inadvertent way. Due to the limitations and challenges related to communication bandwidth, storage, and processing capabilities, it is unwise to transfer unselectively all the photos since most of them often either contain duplicate information, are inaccurate, or are just falsely submitted. In this paper, we propose to design a smart image selection procedure using an asymmetric multi-modal neural network autoencoder to select a subset of photos that has high utility coverage for multiple incoming streams. The proposed system enables selecting high context data from an evolving picture stream and ensures relevance. The approach uses the photo's metadata such as geo-location and timestamps along with the pictures' semantics to decide which photos can be submitted and which ones must be discarded. Simulation results for two different multi-modal autoencoder architectures indicate that a mixed asymmetric stacked autoencoder approach can yield better results outperforming the concatenated input autoencoder while leveraging user-side rendering to reduce bandwidth consumption and computational overhead.
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