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Seeing and not seeing

Current Opinion in Neurobiology, 2002
Recent studies revealed that although subterranean mammals inhabit a dark underground environment, they can still perceive light stimuli and use this to entrain their circadian activity rhythm. Regarding spatial orientation, olfactory and tactile cues are employed for short-distance; whereas for long-distance, subterranean mammals employ the earth's ...
Joseph Terkel, Tali Kimchi
openaire   +3 more sources

On seeing human: a three-factor theory of anthropomorphism.

Psychology Review, 2007
Anthropomorphism describes the tendency to imbue the real or imagined behavior of nonhuman agents with humanlike characteristics, motivations, intentions, or emotions. Although surprisingly common, anthropomorphism is not invariant.
Nicholas Epley, A. Waytz, J. Cacioppo
semanticscholar   +1 more source

Seeing without knowing: Limitations of the transparency ideal and its application to algorithmic accountability

New Media & Society, 2018
Models for understanding and holding systems accountable have long rested upon ideals and logics of transparency. Being able to see a system is sometimes equated with being able to know how it works and govern it—a pattern that recurs in recent work ...
Mike Ananny, K. Crawford
semanticscholar   +1 more source

Seeing and Seeing-As

AI & Society, 1988
This paper highlights the importance of inter-relationships between language, context, practice and interpretation. These inter-relationships should be of interest to AI researchers working in multi-disciplinary fields such as knowledge based systems, speech and vision.
openaire   +3 more sources

Ways of Seeing

Before Photography, 2004
Therapeutic interventions for SEBD are often concerned with attempts to help individuals adjust their ways of seeing themselves and/or the world in which they live.
John D. Benjamin
semanticscholar   +1 more source

The All-Seeing Project V2: Towards General Relation Comprehension of the Open World

European Conference on Computer Vision
We present the All-Seeing Project V2: a new model and dataset designed for understanding object relations in images. Specifically, we propose the All-Seeing Model V2 (ASMv2) that integrates the formulation of text generation, object localization, and ...
Weiyun Wang   +11 more
semanticscholar   +1 more source

Seeing Like a State

, 2017
In this wide-ranging and original book, James C. Scott analyzes failed cases of large-scale authoritarian plans in a variety of fields. He argues that centrally managed social plans derail when they impose schematic visions that do violence to complex ...
James C. Scott
semanticscholar   +1 more source

Seeing Motion in the Dark

IEEE International Conference on Computer Vision, 2019
Deep learning has recently been applied with impressive results to extreme low-light imaging. Despite the success of single-image processing, extreme low-light video processing is still intractable due to the difficulty of collecting raw video data with ...
Chen Chen, Qifeng Chen, M. Do, V. Koltun
semanticscholar   +1 more source

To See or not to See

Programmed Learning and Educational Technology, 1982
Abstract In common with others, the Services have long recognized the importance of the visual media to reinforce printed text and the spoken word. In this article, the author outlines the organization of the graphics support provided for both the operational and training roles of the Royal Air Force. He also gives some examples of the assistance given.
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Seeing That and Seeing As

Noûs, 1993
In this paper I propose an analysis of a variety of perceptual constructions. I will take as the basic construction the seeing-that construction, analyzing it in terms of visual images and the concepts of knowledge and being a cause. I will then propose a reduction of the seeing-x, the seeing-as and the seeing-x-F constructions to the seeing-that ...
openaire   +2 more sources

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