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A fast method for estimating transient scene attributes | IEEE Conference Publication | IEEE Xplore

A fast method for estimating transient scene attributes


Abstract:

We propose the use of deep convolutional neural networks to estimate the transient attributes of a scene from a single image. Transient scene attributes describe both the...Show More

Abstract:

We propose the use of deep convolutional neural networks to estimate the transient attributes of a scene from a single image. Transient scene attributes describe both the objective conditions, such as the weather, time of day, and the season, and subjective properties of a scene, such as whether or not the scene seems busy. Recently, convolutional neural networks have been used to achieve state-of-the-art results for many vision problems, from object detection to scene classification, but have not previously been used for estimating transient attributes. We compare several methods for adapting an existing network architecture and present state-of-the-art results on two benchmark datasets. Our method is more accurate and significantly faster than previous methods, enabling real-world applications.
Date of Conference: 07-10 March 2016
Date Added to IEEE Xplore: 26 May 2016
ISBN Information:
Conference Location: Lake Placid, NY, USA
Citations are not available for this document.

1. Introduction

Outdoor scenes experience a wide range of lighting and weather conditions which dramatically affect their appearance. A scene can change from rainy and brooding to sunny and pleasant in a matter of hours, even minutes. The ability to quickly understand these fleeting, or transient, attributes is a critical skill that people often take for granted. Automatically understanding such subtle conditions has many potential applications, including: improving context-dependent anomaly detection [5]; enabling attribute-oriented browsing and search of large image sets[13], [29]; estimating micro-climate conditions using outdoor webcams [9]; as a pre-processing step for higher-level algorithms for calibration [12], [31], shape estimation [4], [32], geolocalization [14], [33]; and environmental monitoring [10].

Cites in Papers - |

Cites in Papers - IEEE (4)

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1.
Christoph Gerhardt, Florian Weidner, Wolfgang Broll, "SkyCloud: Neural Network-Based Sky and Cloud Segmentation from Natural Images", 2023 8th International Conference on Image, Vision and Computing (ICIVC), pp.343-351, 2023.
2.
Zeyu Zhang, Callista Baker, Noor Azam-Naseeruddin, Jingzhou Shen, Robert Pless, "What Does Learning About Time Tell About Outdoor Scenes?", 2022 IEEE Applied Imagery Pattern Recognition Workshop (AIPR), pp.1-6, 2022.
3.
Rafael Padilha, Tawfiq Salem, Scott Workman, Fernanda A. Andaló, Anderson Rocha, Nathan Jacobs, "Content-Aware Detection of Temporal Metadata Manipulation", IEEE Transactions on Information Forensics and Security, vol.17, pp.1316-1327, 2022.
4.
Cewu Lu, Di Lin, Jiaya Jia, Chi-Keung Tang, "Two-Class Weather Classification", IEEE Transactions on Pattern Analysis and Machine Intelligence, vol.39, no.12, pp.2510-2524, 2017.

Cites in Papers - Other Publishers (1)

1.
Levent Karacan, Zeynep Akata, Aykut Erdem, Erkut Erdem, "Manipulating Attributes of Natural Scenes via Hallucination", ACM Transactions on Graphics, vol.39, no.1, pp.1, 2020.
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References

References is not available for this document.