| Literature DB >> 34997551 |
Bethany Growns1,2, James D Dunn3, Erwin J A T Mattijssen4, Adele Quigley-McBride5, Alice Towler3.
Abstract
Visual comparison-comparing visual stimuli (e.g., fingerprints) side by side and determining whether they originate from the same or different source (i.e., "match")-is a complex discrimination task involving many cognitive and perceptual processes. Despite the real-world consequences of this task, which is often conducted by forensic scientists, little is understood about the psychological processes underpinning this ability. There are substantial individual differences in visual comparison accuracy amongst both professionals and novices. The source of this variation is unknown, but may reflect a domain-general and naturally varying perceptual ability. Here, we investigate this by comparing individual differences (N = 248 across two studies) in four visual comparison domains: faces, fingerprints, firearms, and artificial prints. Accuracy on all comparison tasks was significantly correlated and accounted for a substantial portion of variance (e.g., 42% in Exp. 1) in performance across all tasks. Importantly, this relationship cannot be attributed to participants' intrinsic motivation or skill in other visual-perceptual tasks (visual search and visual statistical learning). This paper provides novel evidence of a reliable, domain-general visual comparison ability.Entities:
Keywords: Forensic science; Individual differences; Perceptual expertise; Visual comparison
Mesh:
Year: 2022 PMID: 34997551 PMCID: PMC9166871 DOI: 10.3758/s13423-021-02044-2
Source DB: PubMed Journal: Psychon Bull Rev ISSN: 1069-9384
Fig. 1Example “match” trials for each comparison task (face: upper-left panel; fingerprint: middle-left panel; potato print; lower-left panel; firearms: right panel)
Descriptive statistics for each task (standard deviation in parentheses) Task performance for face, fingerprint, firearms, and artificial prints are shown in d', while intrinsic motivation is the mean response rating
| Mean task performance | α | Skewness | Kurtosis | |
|---|---|---|---|---|
| Face comparison | 2.21 (.90) | .75 | −.10 | 2.59 |
| Fingerprint comparison | 1.06 (.59) | .61 | .11 | 3.04 |
| Firearms comparison | 2.90 (.97) | .92 | −1.10 | 3.80 |
| Artificial-print comparison | 1.21 (.63) | .82 | −.01 | 3.28 |
| Intrinsic motivation | 4.88 (1.06) | .94 | .16 | 2.40 |
Task performance for face, fingerprint, firearms, and artificial prints are shown in d', while intrinsic motivation is the mean response rating. Cronbach’s alpha was calculated on raw accuracy scores per participant (not d' scores)
Fig. 2Pearson correlations between task performance in Experiment 1
Correlations for performance between tasks in Experiment 1 (Pearson correlations reported with p values in parentheses, with Bayes factors displayed below)
| Face comparison | Fingerprint comparison | Firearms comparison | Artificial-print comparison | |
|---|---|---|---|---|
| Face comparison | – | |||
| Fingerprint comparison | .182 (.043) BF = 1.47 | – | ||
| Firearms comparison | .201 (.026) BF = 2.26 | .334 (< .001) BF = 202.73 | – | |
| Artificial-print comparison | .418 (<.001) BF = 1.50e4 | .530 (<.001) BF = 4.47e7 | .470 (<.001) BF = 4.30e5 | – |
| Intrinsic motivation | −.066 (.468) BF = .27 | .083 (.360) BF = .31 | −.023 (.801) BF = .21 | −.007 (.937) BF = .21 |
Fig. 3Two discriminant validity tasks used in Experiment 2: Visual search (left panel) and visual statistical learning (right panel)
Results of the principal components analysis (loadings matrix and percentage of variance explained)
| Component 1 | Component 2 | Component 3 | Component 4 | Component 5 | |
|---|---|---|---|---|---|
| Face comparison | .40 | −.32 | .80 | .08 | −.32 |
| Fingerprint comparison | .50 | .27 | −.26 | −.64 | −.45 |
| Firearms comparison | .48 | −.00 | −.42 | .73 | −.26 |
| Artificial-print comparison | .59 | −.01 | .02 | −.10 | .79 |
| Intrinsic motivation | <.01 | .91 | .36 | .21 | .02 |
Descriptive statistics for each task (standard deviation in parentheses)
| Task performance | α | Skewness | Kurtosis | |
|---|---|---|---|---|
| Face comparison | 1.97 (0.72) | .79 | .24 | 3.30 |
| Fingerprint comparison | .58 (0.66) | .62 | −.21 | 3.36 |
| Firearms comparison | 2.81 (0.88) | .90 | −.76 | 3.49 |
| Artificial-print comparison | 1.00 (0.51) | .74 | −.30 | 3.10 |
| Visual search | 1002 (636.57) | .86 | .65 | 4.22 |
| Visual statistical learning | 58.15% (18.74) | .88 | .39 | 2.24 |
Task performance for face, fingerprint, firearms, and artificial prints are shown in d’, visual search is mean reaction time (ms) on correct target-present trials, and visual statistical learning is percentage correct. Cronbach’s alpha was calculated on raw accuracy scores per participant for all tasks
Fig. 4Pearson correlations between task performance in Experiment 2
Correlations for performance between tasks in Experiment 2 (Pearson correlations reported with p values in parentheses, with Bayes factors displayed below).
| Face comparison | Fingerprint comparison | Firearms comparison | Artificial-print comparison | Visual search | |
|---|---|---|---|---|---|
| Face comparison | – | ||||
| Fingerprint comparison | .346 (<.001) BF = 346.33 | – | |||
| Firearms comparison | .228 (.011) BF = 4.57 | .287 (.001) BF = 30.65 | – | ||
| Artificial-print comparison | .294 (<.001) BF = 39.56 | .516 (<.001) BF = 1.37e7 | .313 (<.001) BF = 83.84 | – | |
| Visual search | −.020 (.823) BF = .21 | −.053 (.562) BF = .24 | −.212 (.018) BF = 3.04 | −.019 (.835) BF = .21 | – |
| Visual statistical learning | −.00 (.997) BF = .21 | .138 (.126) BF = .63 | .161 (.073) BF = .96 | .191 (.033) BF = 1.80 | −.135 (.136) BF = .60 |
Results of the principal components analysis (loadings matrix and percentage of variance explained)
| Component 1 | Component 2 | Component 3 | Component 4 | Component 5 | Component 6 | |
|---|---|---|---|---|---|---|
| Face comparison | .40 | −.35 | .35 | −.63 | −.42 | −.10 |
| Fingerprint comparison | .53 | −.21 | −.08 | .00 | .44 | .69 |
| Firearms comparison | .44 | .25 | .26 | .62 | −.53 | .11 |
| Artificial-print comparison | .53 | −.17 | −.23 | .19 | .33 | −.70 |
| Visual search | −.16 | −.69 | −.51 | .25 | −.40 | .10 |
| Visual statistical learning | .24 | .51 | −.70 | −.34 | −.28 | .07 |