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Scalable Image Coding for Humans and Machines

Hyomin Choi, Ivan V. Bajić

2022IEEE Transactions on Image Processing148 citationsDOIOpen Access PDF

Abstract

At present, and increasingly so in the future, much of the captured visual content will not be seen by humans. Instead, it will be used for automated machine vision analytics and may require occasional human viewing. Examples of such applications include traffic monitoring, visual surveillance, autonomous navigation, and industrial machine vision. To address such requirements, we develop an end-to-end learned image codec whose latent space is designed to support scalability from simpler to more complicated tasks. The simplest task is assigned to a subset of the latent space (the base layer), while more complicated tasks make use of additional subsets of the latent space, i.e., both the base and enhancement layer(s). For the experiments, we establish a 2-layer and a 3-layer model, each of which offers input reconstruction for human vision, plus machine vision task(s), and compare them with relevant benchmarks. The experiments show that our scalable codecs offer 37%-80% bitrate savings on machine vision tasks compared to best alternatives, while being comparable to state-of-the-art image codecs in terms of input reconstruction.

Topics & Concepts

Computer scienceCodecScalabilityArtificial intelligenceCoding (social sciences)Computer visionMachine visionMachine learningTask (project management)Computer hardwareDatabaseEngineeringSystems engineeringStatisticsMathematicsAdvanced Image and Video Retrieval TechniquesAdvanced Vision and ImagingVisual Attention and Saliency Detection
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