| Literature DB >> 24616703 |
Ralph Simon1, Mirjam Knörnschild2, Marco Tschapka2, Annkathrin Schneider3, Nadine Passauer3, Elisabeth K V Kalko2, Otto von Helversen3.
Abstract
The minimum distance for which two points still can be separated from each other defines the resolving power of a visual system. In an echo-acoustic context, the resolving power is usually measured as the smallest perceivable distance of two reflecting surfaces on the range axis and is found to be around half a millimeter for bats employing frequency modulated (FM) echolocation calls. Only few studies measured such thresholds with physical objects, most often bats were trained on virtual echoes i.e., echoes generated and played back by a computer; moreover, bats were sitting while they received the stimuli. In these studies differences in structure depth between 200 and 340 μm were found. However, these low thresholds were never verified for free-flying bats and real physical objects. Here, we show behavioral evidence that the echo-acoustic resolving power for surface structures in fact can be as low as measured for computer generated echoes and even lower, sometimes below 100 μm. We found this exceptional fine discrimination ability only when one of the targets showed spectral interferences in the frequency range of the bats' echolocation call while the other target did not. This result indicates that surface structure is likely to be perceived as a spectral quality rather than being perceived strictly in the time domain. Further, it points out that sonar resolving power directly depends on the highest frequency/shortest wavelength of the signal employed.Entities:
Keywords: bat; echolocation; resolution; resolving power; structure recognition
Year: 2014 PMID: 24616703 PMCID: PMC3935462 DOI: 10.3389/fphys.2014.00064
Source DB: PubMed Journal: Front Physiol ISSN: 1664-042X Impact factor: 4.566
Figure 3Magnified images, impulse responses and spectral directional plots for structured targets. (A) Magnified images (six times) of the structured targets, which were spheres coated with fine glass beads. (B) Representative impulse responses and (C) spectral directional plots of the structured targets.
Figure 1Experimental room and training apparatus. The room was divided into two compartments, which were connected at one end. Two feeders were placed at the other end of each compartment. Above each feeder, one of two different structured targets were presented. Targets could be replaced by an electro motor. The motor, valves and other targets that should not be presented were completely hidden behind sound-absorbing Basotect® mats.
Figure 4Results of the behavioral experiments with Psychometric function of the ability of six bats to discriminate between targets with different structure depth (experiment I). The results of the different bats are marked by different symbols. The x-axis gives the structure depth of the unrewarded target, while we always trained on the target with the 63 μm structure. The dashed line marks the 75% threshold. (B) Results of experiment II. Mean percentages of correct choices for discrimination of selected pairs of targets. Each pair was presented to each of the four bats for two nights. The error bars indicate the standard error. X-Axis: upper line: difference of structure depth of the respective pair. Middle line: magnified images of the structured targets. Two bottom lines: structure depth of the targets in μm and name of the respective pair.
Figure 2Amplitude, duration and roughness of impulse responses of structured targets. For each target, we analyzed 51 impulse responses measured from different directions. (A) Mean maximum amplitude and standard deviation of the targets′ impulse response. The black line marks the linear regression (y = 0.68 − 0.00028x; r2 = 92.2; p < 0.001). (B) Mean duration and standard deviation of the targets′ duration. The black line marks the exponential growth regression (y = 4.8e 0.003x; r2 = 98.3; p < 0.01). (C) Mean IR roughness and standard deviation (log10M4) for targets with different structure depths. The black line marks the sigmoidal regression.
Figure 5Examples of high-pitched echolocation calls of three specimens of For each specimen (A–C) the power spectrum (left) the spectrogram (right) and the time signal (top) is given.