The Application of Biometric Approaches in Agri-Food Marketing: A Systematic Literature Review
Abstract
:1. Introduction
1.1. Defining Biometrics
1.2. Biometrics Usage
- RQ 1. What is the current status of utilising biometric approaches in marketing studies in the agri-food sector?
- RQ 2. How have biometric approaches been used or studied in agri-food marketing?
2. Methodology and Data Acquisition
2.1. Article Selection
2.2. Data Collection
3. Analysis and Findings
3.1. Current Status of Utilising Biometric Approaches in Agri-Food Sector Marketing
3.1.1. Chronological and Demographical Analyses
3.1.2. Approaches Utilised
3.2. How Have Biometric Approaches Been Used in Agri-Food Marketing?
Author/Year | Food Product | Biometric Approach | Main Outcome |
---|---|---|---|
Scenario: watch promotion information | |||
Stockburger et al. (2009) [41] | Meat dishes, vegetable dishes, and desserts | EEG | Meat stimuli are efficient attention catchers in vegetarians. |
Hummel et al. (2017) [42] | Cake, orange, corn, and hamburger | Eye-tracking | Cut-up, ready-to-eat, low-calorie food attracted more visual attention than unprepared, low-calorie, and high-calorie food. Men were found to pay more attention to high-calorie food, while women paid more attention to low-calorie food. |
Viejo et al. (2018) [43] | Beer | AFEA, eye-tracking, and IRTI | Consumers prefer beers with medium foam height and consider beers with low foam as non-desirable. |
Motoki et al. (2018) [44] | Snacks, fruits, candies, salads, noodles, burgers, etc. | Eye-tracking | The hedonic components of foods could capture automatic visual attention more effectively. |
Scenario: wander in retail shops | |||
Reutskaja et al. (2011) [45] | Junk food such as candy and chips | Eye-tracking | Consumers are good at optimising within a set of items they see during the search process. Consumers’ search process is random concerning the value, and products with a higher value are not more likely to be noticed. |
Mitterer-Daltoé et al. (2014) [46] | Fish products such as fillets, nuggets, and fish burgers | Eye-tracking | Consumers focused more on a “new or different presentation” to decide whether the dish was more or less healthy; however, unusual presentations and fried products were perceived as less healthy. |
Banović et al. (2016) [47] | Red meat products | Eye-tracking | Visible fat had a negative relationship with consumer perception. |
Jaeger et al. (2018) [48] | Apple | Eye-tracking | Food products’ appearance was among the most-important factors influencing consumers’ purchase intention. |
Clement (2007) [49] | Pasta and jam | Eye-tracking | Consumers exhibited a muddled search strategy when shopping in grocery shops. Packaging design influences consumers’ in-store buying decision process in several phases. |
Vriens et al. (2020) [50] | Snacks such as nuts, cookies, chips, cereal bars, and beef jerky | Eye-tracking | Directional cues, such as promotion, significantly affect consumers’ attention and increase the chance that a consumer will decide to buy. |
Zuschke (2020) [51] | Chocolate bars | Eye-tracking | Products’ positioning on a display shelf could draw consumers’ attention. Furthermore, the size and visual salience of products on shelves could attract consumers’ attention and influence their choices. |
Monteiro et al. (2020) [52] | Wine | Eye-tracking | Consumers’ attention paid to the wine bottle is a determinant of their purchase intention. Furthermore, quality perceptions and desire significantly influence consumers’ wine-purchase intentions. |
Bialkova et al. (2020) [53] | Muesli bars | Eye-tracking | The brand’s strength and product variety determine where consumers’ attention goes and, thus, the purchase decision. Products’ placement emerged as a significant determinant in the in-store environment. Nutrition labels increased attention and influenced purchase outcomes, but these effects were contingent on the purchase goals. Colour-coded labels and placement further lifted attention and purchases, but the brand’s strength modulated these effects. Shopping goals and prior knowledge also played a role in determining which product gets the most attention and is often chosen. |
Gidlöf et al. (2017) [54] | Pasta, cereal, and yogurt | Eye-tracking | Product packages and displays could catch consumers’ attention; display attributes included the number of facings, visual salience, and product placement. |
Drexler and Souček (2017) [55] | Packed vegetables, dairy food, packaged fish, packaged meat, and frozen food | Eye-tracking | Shelf level significantly influences the variability of attention of all product categories, except vegetables. The influence of the type of shelves was proven for meat and fish. |
Scenario: look at food packaging | |||
López-Mas et al. (2022) [56] | Fish products | Eye-tracking, AFEA, and GSR | Involving consumers in all stages of the NPD is recommended, especially in packaging design, as it has been proven that co-creation is a straightforward and effective way to design the fish product’s packaging according to consumers’ needs and demands. |
Horská et al. (2020) [57] | Cheese | Eye-tracking | Consumers pay attention to factors such as brand name, type of product, specific features, the origin of ingredients, and the aesthetic side of design when they look at product packaging. |
Jantathai et al. (2013) [58] | Cake | Eye-tracking | The colours of the used food products significantly affected the gazing behaviour and the choice. |
Varela et al. (2014) [59] | Breakfast cereal | Eye-tracking | When there was abundant information on food packages, colour was one of the factors attracting most of the consumers’ attention, together with brands, product names, and graphics. In contrast, consumers noticed less health information. |
Husić-Mehmedović et al. (2017) [60] | Beer | Eye-tracking | Physical and semantic package features affect attention during the “orientation” phase and reveal how efficiently attention is transferred to the brand in the “discovery” phase. Moreover, packages that attract the most attention are not necessarily likeable or suitable, but recall is also a questionable measure of attention. |
Clark et al. (2021) [61] | Milk | AFEA | Yellowish colour, decorative fonts, and curved shapes are well associated with happiness feeling and purchasing intention. |
García-Madariaga et al. (2019) [62] | Soft drinks and snacks | Eye-tracking and EEG | The presence of visual elements, either images or texts on packages, increased the participants’ level of attention. Colour modifications do not significantly affect participants’ neurophysiological attention levels. Furthermore, the neurophysiological effects among the participants do not necessarily coincide with their subjective evaluations of preference. |
Zhang and Seo (2015) [63] | Donuts, tacos, and cake | Eye-tracking | Background salience did affect participants’ visual attention. Specifically, the more complex and salient the table setting and decoration, the less attention consumers pay to the food items. The image location is an essential factor to be studied as well. |
Rebollar et al. (2015) [64] | Chocolate snack | Eye-tracking | Consumers prefer the logos in the upper left corner of the packaging. |
Vergura and Luceri (2018) [65] | Lemon cake, biscuits, and focaccia snack | AFEA | Compared to the background representation, the foreground representation of products elicits higher favourable emotional reactions because there is less perceived psychological distance between the subject and the product. However, the purchase intention did not significantly differ between the foreground and background conditions. |
Lacoste-Badie et al. (2020) [66] | Biscuit | Eye-tracking | Front-of-pack variations catch respondents’ attention. Visual salience, such as colour, shape, and motion, can capture consumers’ attention. |
Fazio et al. (2020) [67] | Olive oil | Eye-tracking | Olive oil packages with a hand using the product could attract consumers’ attention. |
Hurley et al. (2015) [68] | Fruit drinks | Eye-tracking | There were no significant differences in consumers’ attention when they shopped for fruit drinks with digital or flexographic labels. |
Samant et al. (2018) [69] | Potato chips product | Eye-tracking | Food neophobia will affect consumers’ expected and actual likings of ethnic-flavoured potato chips, especially Chinese-flavoured ones. |
Gunaratne et al. (2019) [70] | Chocolate | Eye-tracking, AFEA | Fixations on familiar chocolate packaging were correlated with happiness. The study intended to ascertain how culturally distinct consumers from Northern Europe and Northeast Asia perceive and choose product packaging differently. |
Ploom et al. (2020) [71] | Biscuit | Eye-tracking and AFEA | European and Asian consumers have different perceptions of packaging design and choices, and the authors suggested marketers adapt packaging design accordingly. |
Scenario: read food labels | |||
Ares et al. (2014) [72] | Yogurt | Eye-tracking | Consumers typically had two thinking styles on food choice: rational and intuitive. Rational-thinking consumers paid more attention to information search and thoughtful analysis of nutritional information for purchase decision-making than consumers who potentially relied on intuitive thinking. Meanwhile, consumers’ existing label knowledge would increase their visual attention to labels and ultimately improve their purchase decision. |
Samant and Seo (2016) [73] | Chicken drumsticks and breasts | Eye-tracking | Consumers with a higher degree of label comprehension looked at the label claims associated with sustainability and process more often and longer than those with a lower degree of label comprehension. |
Piqueras-Fiszman et al. (2013) [34] | Jam | Eye-tracking | The ridged surface of the jars could spread consumers’ gaze to another packaging area, such as the border or flavour label. A rounded jar directed consumers’ attention to the flavour label. In addition, the results suggested that marketers should replace textual information regarding the ingredients with visual information on the front of the packaging to influence consumers’ purchase intention. |
Bialkova et al. (2014) [74] | Yogurt | Eye-tracking | Consumers had more-prolonged and -frequent fixations in products with traffic-light-colour-coded Guideline Daily Amounts (GDAs) than monochrome GDAs or Choices logos. |
Bogomolova et al. (2020) [75] | Orange juice and tomato sauce | Eye-tracking | Better label design could attract consumers’ attention and eye fixation, particularly when the unit price is colour highlighted and for consumers who are less price concerned. |
Peschel et al. (2019) [76] | Chocolate | Eye-tracking | Large and high-salience organic labels could engender a higher eye fixation than small and low-salience ones. |
Ares et al. (2013) [33] | Mayonnaise, pan bread, and yogurt | Eye-tracking | Regardless of the types of products and label design, selected label zones such as the brand, the ingredients, the image on the label, and the nutritional information always attract consumers’ attention. |
Lombard et al. (2020) [77] | Red meat | Eye-tracking | Brand information significantly influences consumers’ purchase intention. An unfamiliar beef brand can only attract higher-educated, younger, and higher-income consumers. |
Lombard (2022) [78] | Red meat | Eye-tracking | South African consumers mostly paid attention to the butchery’s name, overlooking the packaging date, sell-by date, and cut name labels. When looking into price labels, younger consumers were more inclined to pay attention to the price labelling aspects, and consumers with a greater level of education paid better attention to price labels since they had better labelling knowledge. Moreover, the influence of brand information is connected with price information. |
Brown et al. (2012) [79] | Soft drinks | EEG | Price was crucial for persuading consumers to change from a preferred manufacturer brand to a less-familiar private-label brand when the taste was perceived to be the same. |
Helmert et al. (2017) [80] | Onion, bread, sausage, cucumber, tomato, and mushroom | Eye-tracking | Consumers declined suboptimal products compared to impeccable products. However, when presented with differently designed price badges, there is a positive trend to purchase the suboptimal items. |
Ballco et al. (2019) [81] | Yogurt | Eye-tracking | Nutrition claims (NCs) on food labelling were an effective way to attract consumers’ attention as consumers care about their health. Within all the NCs, consumers attached the highest importance to fat-free, source of vitamin B6, and source of calcium and the least to low sugar. |
Ballco et al. (2020) [82] | Yogurt | Eye-tracking | Nutrition claims and health claims positively affected consumers’ preferences and purchasing decisions, and consumers were more willing to buy products that carry nutrition claims and health claims. However, while consumers like the idea of health claims, they do not want to be overwhelmed by label information. |
Oliveira et al. (2016) [83] | Regular and functional probiotic milk | Eye-tracking | Consumers’ attention to labels and purchase intention decreased as information density increased. |
Tórtora et al. (2019) [31] | Cookie and cracker | Eye-tracking | While nutritional warnings could attract consumers’ attention, they also discourage consumers’ choice of products. |
Van Loo et al. (2015) [84] | Coffee | Eye-tracking | Increased attention to sustainability labels on coffee products was associated with an increased willingness to pay for products that carry those labels. |
Meyerding and Merz (2018) [85] | Apple | Eye-tracking | The presence of an organic label positively affected consumers’ trust in food products. |
Liu et al. (2022) [86] | Wine | Eye-tracking and AFEA | The country-of-origin (COO) information fetched consumers’ attention. The COO could draw more attention if presented as a logo rather than a script or text. |
Scenario: consume food products | |||
Le Goff and Delarue (2017) [87] | Insect-based chips | AFEA | Consumers’ acceptance of consuming insect-based chips is significantly less negative than self-reported. |
Gunaratne et al. (2019) [88] | Chocolate | IRTI, GSR, and AFEA | Consumers preferred sweet chocolate more. Salty chocolate could even cause sad emotions. |
Horska et al. (2016) [89] | Wine | EEG and AFEA | Facial expressions (happiness, sadness, disgust, neutral emotions, anger, and surprise) can be captured immediately after tasting tested wine samples. |
Viejo et al. (2019) [90] | Beer | EEG, AFEA, and IRTI | People do not like bitter beer. A decrease in heart rate occurred when consumers tasted beer samples with higher bitterness. |
Mehta et al. (2021) [91] | Energy drink | AFEA | Traditional self-reported emotional measurements and automated AFEA can vary in their outcome; however, all these reactions provide meaningful insights into the differentiation of the products. |
Kostyra et al. (2016) [92] | Ham | AFEA | Sensory factors, such as taste and flavour, affected consumers’ emotional responses. Sweet taste could evoke happiness; a bitter taste would cause anger and disgust, and salty and sour tastes would make people feel surprised, sad, and even afraid. |
3.2.1. Capture Consumers’ Responses When They Are Watching Promoted Information
3.2.2. Capture Consumers’ Responses When They Are Wandering in Retail Shops
3.2.3. Capture Consumers’ Responses When They Are Looking at Food Packaging
Bottom-Up Stimulus-Driven Factors
Top-Down Stimulus-Driven Factors
3.2.4. Capture Consumers’ Responses When They Are Reading Food Labels
3.2.5. Capture Consumers’ Responses When They Are Consuming Food Products
4. Discussion
4.1. Advantages of Utilising Biometric Approaches in Agri-Food Marketing
4.2. Future Trends and Challenges of Utilising Biometric Approaches in Agri-Food Marketing
5. Limitations
6. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Inclusion Criteria |
|
Exclusion criteria |
|
Biometric Approach | Main Features |
---|---|
Eye-tracking |
|
Automatic facial expression analysis (AFEA) |
|
Electroencephalograms (EEGs) |
|
Galvanic skin response (GSR) |
|
Infrared thermal imagery (IRTI) |
|
Downsides | Potential Solutions |
---|---|
Data type: Limited insight into participants’ underlying cognitive processes | Combine biometric approaches with other methods to deeply understand consumers |
Participation: Practical challenges for participants in biometric experiments | Innovate equipment and/or recruit qualified participants |
Data analysis: Complexity in data analysis and reliance on researchers’ expertise | Use advanced techniques (e.g., machine learning) |
Cost: High monetary and time cost related to equipment, staff, and location | Boost investment from government, institutions, and industry |
Ethics: Privacy and ethical considerations | Prioritise privacy, obtain informed consent, and ensure data security |
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© 2023 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
Share and Cite
Cong, L.; Luan, S.; Young, E.; Mirosa, M.; Bremer, P.; Torrico, D.D. The Application of Biometric Approaches in Agri-Food Marketing: A Systematic Literature Review. Foods 2023, 12, 2982. https://doi.org/10.3390/foods12162982
Cong L, Luan S, Young E, Mirosa M, Bremer P, Torrico DD. The Application of Biometric Approaches in Agri-Food Marketing: A Systematic Literature Review. Foods. 2023; 12(16):2982. https://doi.org/10.3390/foods12162982
Chicago/Turabian StyleCong, Lei, Siqiao Luan, Erin Young, Miranda Mirosa, Phil Bremer, and Damir D. Torrico. 2023. "The Application of Biometric Approaches in Agri-Food Marketing: A Systematic Literature Review" Foods 12, no. 16: 2982. https://doi.org/10.3390/foods12162982
APA StyleCong, L., Luan, S., Young, E., Mirosa, M., Bremer, P., & Torrico, D. D. (2023). The Application of Biometric Approaches in Agri-Food Marketing: A Systematic Literature Review. Foods, 12(16), 2982. https://doi.org/10.3390/foods12162982