ROMay 22, 2018

Towards Inverse Sensor Mapping in Agriculture

arXiv:1805.08595v13 citations
Originality Synthesis-oriented
AI Analysis

This addresses the need for accurate perception and robust quantification in agricultural processing, though it appears incremental as it builds on existing Industry 4.0 concepts.

The paper tackles the problem of creating a unified environmental representation in agriculture by developing inverse sensor models to compile data from diverse sources like sensors, drones, and satellites, enabling interoperability and information transparency for agricultural systems.

In recent years, the drive of the Industry 4.0 initiative has enriched industrial and scientific approaches to build self-driving cars or smart factories. Agricultural applications benefit from both advances, as they are in reality mobile driving factories which process the environment. Therefore, acurate perception of the surrounding is a crucial task as it involves the goods to be processed, in contrast to standard indoor production lines. Environmental processing requires accurate and robust quantification in order to correctly adjust processing parameters and detect hazardous risks during the processing. While today approaches still implement functional elements based on a single particular set of sensors, it may become apparent that a unified representation of the environment compiled from all available information sources would be more versatile, sufficient, and cost effective. The key to this approach is the means of developing a common information language from the data provided. In this paper, we introduce and discuss techniques to build so called inverse sensor models that create a common information language among different, but typically agricultural, information providers. These can be current live sensor data, farm management systems, or long term information generated from previous processing, drones, or satellites. In the context of Industry 4.0, this enables the interoperability of different agricultural systems and allows information transparency.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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