Flexible image analysis for law enforcement agencies with deep neural networks to determine: where, who and what
Henri Bouma, Bart Joosten, Maarten C Kruithof, Maaike H T de Boer,, Alexandru Ginsca (LIST (CEA)), Benjamin Labbe (LIST (CEA)), Quoc T Vuong, (LIST (CEA))

TL;DR
This paper presents a flexible deep learning framework for law enforcement to analyze images by determining location, identifying persons and objects, and enabling custom queries with minimal annotation effort.
Contribution
It introduces novel methods for geo-localization, fine-grained concept analysis, person attribute recognition, an active learning annotation tool, and query expansion for law enforcement image analysis.
Findings
Geo-localization model accurately estimates image origin.
Fine-grained concept analysis distinguishes sub-categories effectively.
Active learning reduces annotation effort significantly.
Abstract
Due to the increasing need for effective security measures and the integration of cameras in commercial products, a hugeamount of visual data is created today. Law enforcement agencies (LEAs) are inspecting images and videos to findradicalization, propaganda for terrorist organizations and illegal products on darknet markets. This is time consuming.Instead of an undirected search, LEAs would like to adapt to new crimes and threats, and focus only on data from specificlocations, persons or objects, which requires flexible interpretation of image content. Visual concept detection with deepconvolutional neural networks (CNNs) is a crucial component to understand the image content. This paper has fivecontributions. The first contribution allows image-based geo-localization to estimate the origin of an image. CNNs andgeotagged images are used to create a model that determines the location of…
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Taxonomy
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