Litcius/Paper detail

Tuning movement for sensing in an uncertain world

Chen Chen, Todd D. Murphey, Malcolm A. MacIver

2020eLife40 citationsDOIOpen Access PDF

Abstract

While animals track or search for targets, sensory organs make small unexplained movements on top of the primary task-related motions. While multiple theories for these movements exist-in that they support infotaxis, gain adaptation, spectral whitening, and high-pass filtering-predicted trajectories show poor fit to measured trajectories. We propose a new theory for these movements called energy-constrained proportional betting, where the probability of moving to a location is proportional to an expectation of how informative it will be balanced against the movement's predicted energetic cost. Trajectories generated in this way show good agreement with measured trajectories of fish tracking an object using electrosense, a mammal and an insect localizing an odor source, and a moth tracking a flower using vision. Our theory unifies the metabolic cost of motion with information theory. It predicts sense organ movements in animals and can prescribe sensor motion for robots to enhance performance.

Topics & Concepts

Tracking (education)Computer scienceArtificial intelligenceMovement (music)Motion (physics)TrajectoryAdaptation (eye)Computer visionObject (grammar)Control theory (sociology)Task (project management)RobotPsychologyNeuroscienceEngineeringPhysicsAcousticsSystems engineeringAstronomyPedagogyControl (management)Fish biology, ecology, and behaviorNeural dynamics and brain functionNeurobiology and Insect Physiology Research