1. Introduction
Indoor navigation systems realize the output of navigation paths in buildings through road network construction [
1], indoor positioning [
2], and path planning [
3]. It is necessary and important to develop an indoor navigation system that reflects the general demands of users in shopping malls. Recently, many scholars have carried out independent research on the three important content factors of an indoor navigation system. In road network construction, IFC is a commonly used road network extraction method, combined with the BIM model [
4,
5]. In indoor positioning, Liu et al. [
6] fused magnetic and visual sensors to study indoor localization without infrastructure, while Farahsari et al. [
7] studied Internet of Things (IoT)-based indoor localization. In path planning, Deng et al. [
8] studied path planning under fire evacuation scenarios, while Lee and Medioni [
9] used an improved D* algorithm to plan paths. However, at present, there is no mature indoor navigation system [
10,
11,
12] that combines the three independent parts, and in particular, the existing indoor navigation systems do not really understand the users’ demand, and there is no indoor navigation system that combines the users’ general demand and dynamic environmental changes. At present, the visual navigation service only uses the fixed point where the LED display screen is located as the navigation starting point, and the user cannot navigate in real time on their mobile phone. The navigation service only provides the resulting output of the shortest path, and only a few shopping malls provide a personalized choice of priority vertical elevators or priority horizontal escalators, without considering environmental changes (such as congestion and emergencies) and their impact on user navigation experience and satisfaction. This leads to user dissatisfaction with indoor navigation deficiency. Users often find that the positioning of the navigation is inaccurate, the planned shortest route is congested, the traffic time is wasted, and navigation in the vertical direction is not clear. The reason for these existing affairs and problems is that the indoor navigation system has not undergone an adequate demand functional analysis. As a functional service system for space management and operation and maintenance management, the indoor navigation system is used by “people” with independent will. Therefore, it is not enough for designers to only satisfy the planning of the shortest path between the start point and the end point. Only by conducting sufficient user research and demand analysis can the indoor navigation system achieve the greatest practical role and meet the individual needs of users.
In general, existing indoor navigation systems of shopping malls have problems such as ignoring the general demand of users and ignoring the dynamic changes of the scene. The lack of a complete survey for demand analysis of indoor navigation in shopping malls is, thus, the key issue to be resolved. General demand analysis has been proven to be the key starting point of system design, with successful examples such as industrial energy demand models [
13], cooling demand models to design cooling systems for large office buildings [
14], and hotel room demand analysis, which changed the direction of the hospitality industry [
15]. However, there is a gap in the effective analysis of the general demand for indoor navigation systems.
There are several mainstream models for demand analysis, including Maslow’s hierarchy of needs [
16], SWOT analysis [
17], the Boston matrix [
18], and PEST analysis [
19]. Among them, Maslow’s Hierarchy of Needs method divides people’s needs into five levels, physiology, safety, emotional belonging, respect, and self-realization, which is suitable for determining the macro function of products, such as designing internet products with the function of making friends out of emotional belonging. SWOT analysis divides events into four dimensions, strengths, weaknesses, opportunities, and threats, and constructs a matrix to facilitate the design of product positioning and competitive strategies. The Boston Matrix divides products into four categories, star category, thin dog category, problem category, and golden bull category, which is helpful for sales strategy adjustment. The PEST analysis method obtains the macro-environmental analysis of the product through the analysis of the political environment, economic environment, social environment, and technical environment. Compared with these methods, the Kano model is another important model that better suits the purpose of the study. The Kano model is a theory invented and proposed by Professor N. Kano in 1984. With its essence of reflecting the nonlinear relationship between satisfaction and performance [
20], the model can classify and rank the demand of users. The Kano model helps to increase the value of a system or product, and will focus on the service design, development and verification phases, and functional design by real customers in the development design phase [
21]. Integrating the Kano model into existing design methods can improve users’ satisfaction with product design [
22]. At present, the Kano model has been fully applied and studied in various aspects such as product development and the healthcare industry. Asian et al. [
20] used this model to study the effective variables of third-party logistics providers in the automobile manufacturing industry. Hashim and Dawal [
23] improved ergonomic design with the help of the Kano model. Li et al. [
3] studied the user needs of an eco-city based on the Kano model. Materla et al. [
24] summarized the application of the Kano model in the healthcare industry. However, no report on the application of the Kano model in the building operation and maintenance management stage has been found, especially in the design of indoor navigation products in shopping malls.
In order to fill the gap in which there is a lack of effective general demand analysis for indoor navigation, which causes deviation between the functions of the indoor navigation system and the user’s general demand, this paper uses the Kano model with 498 questionnaires to determine the priority of different general demands in the functional design for indoor navigation in shopping malls. The design of a shopping mall indoor navigation system based on users’ general demand and dynamic environmental changes is also proposed to inspire future designers for related products. The main contribution of this paper is to apply the Kano model, for the first time, to determine the general demand and functions of indoor navigation in shopping malls. Existing research (
Table 1) on user demand analysis of indoor navigation systems has mostly focused on the navigation needs of special populations [
25,
26], and mobility needs in the navigation process [
27,
28]. Compared to the existing literature in terms of user demand research for indoor navigation, the general demand analysis method based on the Kano model in this paper is able to reveal the user accreditation degree of the different functions of indoor navigation systems in shopping malls and meet the general demand of most people. Furthermore, the findings of this paper provide insight into users’ behaviors and preferences from questionnaire research, which will benefit further studies on indoor navigation systems for shopping malls.
The following is a summary of the framework of this paper.
Section 2 describes the Kano model and the related evaluation indicators.
Section 3 presents the results of the questionnaire survey, including the analysis of the basic information of the questionnaire, the correlation analysis, and the related indicators of the Kano model.
Section 4 is a practical implementation of the general demand for an indoor navigation system in shopping malls, which is based on the results of
Section 3.
2. Materials and Methods
The method used in this paper is shown in
Figure 1, which mainly includes literature research, offline interviews, and questionnaire research. Through literature research and offline interviews, several major functions of general demand can be initially considered in the indoor navigation of shopping malls, as well as related qualitative indicators. Except for a few customers who are particularly familiar with shopping malls, most customers have high indoor navigation demands. Zhou et al. [
29] considered path complexity, congestion, and blocking events when planning indoor paths. Basu et al. [
30] believe that the Pedestrian Route Choice (PRC) needs to consider the relationship between perceptual factors and objective factors. The qualitative indicators mentioned here are mainly crowd-density indicators and traffic-speed indicators. Based on the above discussion, this paper identifies five general demands (2.1 Identify 5 general demands), namely “Avoid crowded/emergency roads”, “Passing by specific types of shops”, “Bypass specific types of shops”, “Vertical elevator first”, and “Escalator first”. Next, we outline the questionnaire design based on these five general demands. The questionnaire is divided into three parts, including the basic personal information of users, objective data of users related to the indoor navigation of shopping malls, and subjective data of users. Due to the COVID-19 pandemic, this questionnaire was collected online. After obtaining the results of the questionnaire research, the analysis work was carried out. The reliability, validity, and correlation were tested, and the Kano model and related evaluation indicators were introduced. The types of general demands and the priority of consideration were determined through Kano model classification, mixed class, and coefficient analysis. A design of the indoor navigation system of a shopping mall incorporating general demands identified from the results is presented to show how the conclusions drawn by the Kano model can be applied to the system design.
2.1. The Kano Model
The Kano model divides demand attributes into 5 types, as shown in
Table 2 and
Figure 2 [
31,
32]. The
X-axis represents the level of quality performance (from insufficient to sufficient) and the
Y-axis represents the level of user satisfaction (from dissatisfaction to satisfaction), which can be divided into five categories. The must-be quality (M) means that when this factor is applied or improved, the user’s satisfaction with the product will not be improved. If this factor is not considered or is weakened, the user’s satisfaction with the product will drop significantly. This factor must be considered in product design. The indifferent quality (I) means that regardless of whether this factor is applied or not, the user’s satisfaction with the product does not fluctuate, and this factor does not need to be considered in product design. The one-dimensional quality (O) means that when the factor is applied or improved, the user’s satisfaction with the product is greatly improved. If the factor is not considered or is weakened, the user’s satisfaction with the product will decrease accordingly. This factor is a competitive attribute and is an important factor in product design. The considered part is different from other conventional products and reflects unique, special, and high-quality characteristics. The attractive quality (A) means that when the factor is applied or improved, the user’s satisfaction with the product is greatly improved. If the factor is not considered or is weakened, the user’s satisfaction with the product does not change, and the factor can be developed within the scope of the cost. The reversal quality (R) means that when the factor is applied or improved, the user’s satisfaction with the product does not rise but falls, and the user has no demand for the factor, which should be eliminated in the design.
Figure 2.
Relationship between quality performance and user satisfaction of Kano types [
31,
32].
Figure 2.
Relationship between quality performance and user satisfaction of Kano types [
31,
32].
2.2. Questionnaire Design Based on Kano Model
The premise of the Kano model is questionnaire research. Functional questions and dysfunctional questions were set in the questionnaire. Functional questions aim to ask whether the user is satisfied if this demand is considered in the product design. The purpose of the dysfunctional question is to ask if the user would be satisfied if the product design left this demand out. Therefore, in the questionnaire design, a maximum of five demand/function questions should be set in the same questionnaire, and the keywords of the functional question and dysfunctional question should be bolded in different colors to prevent the questionnaire results from being affected by unclear questions. In addition, multiple-choice questions were utilized when setting the question type, avoiding using an array of questions and preventing the respondents from answering questions in confusion due to the small degree of distinction.
Therefore, the questionnaire developed in this study adopted the form of “Single choice + Multiple choice”, combined with the interviews of pedestrians in shopping malls, to obtain three elements, including user’s basic information, objective data, and subjective data about users related to indoor navigation in shopping malls. The questionnaire included the following three main parts, and the specific item settings are shown in
Figure 3.
Part1: User’s personal basic information, including gender, age, and occupation.
Part2: Objective data of users related to the indoor navigation of shopping malls, including the frequency of visiting shopping malls, the purpose of visiting shopping malls, the types of shopping malls visited, whether users are familiar with shopping mall maps, the types of shops they often visit, whether they can accurately find the shortest path, etc.
Part3: Subjective data of users related to the indoor navigation of shopping malls, including opinions and demands on indoor navigation in shopping malls, and satisfaction with existing indoor navigation signs/systems. Among them, the functional and dysfunctional questions for indoor navigation in shopping malls were combined with 5 general demands, including “Avoid crowded/emergency roads”, “Passing by specific types of shops”, “Bypass specific types of shops”, “Vertical elevator first”, and “Escalator first”. The sources references of the 5 general demands are shown in
Table 3, which prove that the investigated functions cover most shopping mall users. The setting of functional and dysfunctional questions is shown in
Table 4. The questionnaire respondents are allowed to fill in personalized needs in addition to the 5 general demands. Among them, because “Avoid congestion/emergency roads” involves quantitative analysis, the choice of indicators for the congestion environment was added to the questionnaire. We adopted results from Zhou et al. [
29], which divided the congestion index into the traffic density index and the traffic speed index. The traffic density index (person/m
2) was divided into four grades ([0, 0.75], (0.75, 2.00), (2.00, 3.50), and (3.5, +∞]). The traffic speed index (m/s) was divided into four levels ((1.40, +∞], (1.08, 1.40], (0.30, 1.08], and [0, 0.30]). Based on this, the questionnaire for this study was divided into multiple levels, and the traffic density index was divided into six grades (0.25 people/m
2, 0.5 people/m
2, 0.75 people/m
2, 1.25 people/m
2, 2 people/m
2, and ≥2 people/m
2). The traffic speed index was divided into four grades (1.5 m/s, 0.75 m/s, 0.3 m/s, and ≤ 0.3 m/s). In order to improve people’s engagement with the questionnaire, pictures of the scene under different traffic densities were simulated (shown in
Figure 4), which is analogous to the normal walking speed.
Table 3.
Source of 5 general demands.
Table 3.
Source of 5 general demands.
Items | Corresponding Source | References |
---|
Avoiding crowded/emergency roads | Literature research | Zhou et al. [29] |
Passing by specific types of shops | Offline interviews | Randomly interviewed 5 male customers and 5 female customers, the age of the customers involved “old”, “middle” and “youth” generations |
Bypassing specific types of shops |
Vertical elevators first | Shopping mall field research | Hankyu Ningbo |
Escalator first |
Figure 4.
Pictures with the scene under different crowd densities.
Figure 4.
Pictures with the scene under different crowd densities.
2.3. Determination of Kano Model by Berger
There were five options for functional and dysfunctional questions, including “Like”, “Must-be”, “Neutral”, “Live with”, and “Dislike”. According to the choices of the people investigated, the Kano type of this general demand was obtained, as shown in
Table 5. Among them, the Kano types obtained according to the dysfunctional and functional questions correspond to the Kano type in
Table 2. Then, the principle of relative majority was adopted to summarize all Kano types of each demand item and determine the final Kano type of each demand item. Berger [
33] proposed an improved Kano category, which is defined as follows:
If f (O+A+M) > f (I+R+Q), the Kano type is the highest frequency type among O, A, and M;
If f (O+A+M) < f (I+R+Q), the Kano type is the highest frequency type among I, R, and Q;
If f(O+A+M) = f (I+R+Q), the Kano type is the highest frequency type among O, A, M, and I;
where f (X) is the frequency of the demand type.
2.4. Determination of TS and CS of the Kano Model
The second part is mixed class analysis, proposed by Newcomb [
35], which includes two indicators (as shown in Equations (1) and (2)), TS (Total Strength) and CS (Category Strength). If the TS value ≥ 0.6 and the CS value ≤ 0.06, it indicates that the demand belongs to the mixed class H, and the two mixed types, namely the two types with the highest frequency, should be explained.
2.5. Determination of Better-Worse Coefficient of Kano Model
The third part is the analysis of the Better–Worse coefficient, which is calculated by the percentage of each demand to the classification. The Better–Worse coefficient is used to indicate the influence degree of whether the demand is satisfied or not for the respondents. The better coefficient is an “increased satisfaction coefficient”, indicating that when the demand/function is satisfied, the user’s satisfaction will be improved. The closer the coefficient is to 1, the more obvious the improvement in satisfaction will be. The Worse coefficient is “dissatisfaction coefficient after elimination”, indicating that when the demand/function is eliminated, the user’s satisfaction will decrease. The closer the coefficient is to −1, the more obvious the decrease in satisfaction will be. The Better coefficient and Worse coefficient are calculated as follows (Equations (3) and (4)):
The evaluation of the Average Satisfaction Coefficient (ASC) based on the Better–Worse coefficient was proposed by Park [
36], which is strongly correlated with the Better and Worse coefficients and can reflect the priority degree in functional design. The higher the ASC value (as shown in Equation (5)), the higher priority the change demand/function should be.
If we plot a four-quadrant graph based on the Better–Worse coefficients of the demand factors, the “Better” coefficient is along the X-axis and the absolute value of the “Worse” coefficient is along the Y-axis. The origin is the average value of the absolute value of the “Better” coefficient and the “Worse” coefficient at each point.
4. Practical Implementations of Findings from the Survey
Based on literature research and the questionnaire analysis of the Kano model, it can be concluded that “Avoid crowded/emergency roads” is an important demand, while “Vertical elevator first” and “Passing by specific types of shops” are expected general demands when designing the indoor navigation system of shopping malls. “Bypass specific types of shops” and “Escalator first” are undifferentiated requirements and may not be considered.
Table 13 shows answers to “When planning the path of indoor navigation system, you want it to consider: ______” in the questionnaire. The survey results are similar to those of the Kano model. “Avoiding crowded/emergency sections”, “Vertical elevator first”, and “Passing by specific types of shops” account for the largest proportion, while “Bypassing specific types of shops” and “Escalator first” account for less than 40%.
In addition to the analysis of the five general demands, the questionnaire also set the following question: “What are your requirements for indoor navigation in shopping malls/what do you think the most convenient and effective indoor navigation system should have: _____”. A total of 141 valid answers were collected. The users’ expectation of the system is being clear and easy to use, having detailed precision, and real-time accuracy. In terms of specific needs, some users mentioned the demand to identify shopping mall activities, indicate the location of toilets, and provide a variety of options and non-graphic designs by floor.
This paper determines demand functions of three levels, as shown in
Table 14, including the function level, use level, and effect level. The function level is to realize three exciting needs and expectation needs and can choose whether to implement specific functions through a personalized interface. The interface should be simple and clear, with navigation made easy enough even for people with a weak sense of direction. At the effect level, new demands are put forward for the specific environment of shopping malls. For example, the path congestion index needs to change in real time, and even predict future congestion based on past long-term data. It is necessary to solve the three-dimensional navigation results of the shopping mall from the two aspects of positioning and navigation, rather than a two-dimensional plane. More consideration should be given to special spaces such as toilets, vertical elevators, and horizontal escalators. Multiple paths can be provided if the user desires.
Based on the determined system functions, the shopping mall indoor navigation system as shown in
Figure 18 was designed. The dotted box in
Figure 16 is the preparatory work for the indoor navigation system of the shopping mall. First, based on the BIM model, the 3D road network is obtained through IFC and stored in the form of a matrix. Meanwhile, a database of indoor images of shopping malls is established, and 200 photos were selected for each of the four different types of scenes of elevators, atriums, gates, and ordinary indoor space. Subsequently, computer vision was used to determine whether a location in the mall is a congested route. Then, the multi-source heterogeneous information such as the congestion situation, shops on the intended route, three-dimensional coordinates, and vertical elevators are integrated into the shortest path routing algorithm. The parameters are continuously adjusted to obtain the most suitable route evaluation algorithm. Among them, the login page of the indoor navigation system of the shopping mall is shown in
Figure 19, which provides the basic information of the user. In addition, the functional page design of the shopping mall indoor navigation system is shown in
Figure 20. The user scans the QR code of the nearest store through the mobile phone, and their three-dimensional coordinates can be obtained in the background. On the mobile phone terminal, the user enters the destination, the shops they intend to pass through, whether to avoid crowded road sections, and whether vertical elevators are preferred, and then the optimal path calculated by the path planning algorithm can be obtained. The mobile terminal of the mobile phone presents the visual effect of the path, and displays the important store nodes of the path to improve readability and understandability.
5. Conclusions
This paper provides a detailed analysis of users’ general demand for indoor navigation systems for shopping malls. Three important functions that need to be considered in the design of shopping mall indoor navigation system are obtained. According to the questionnaire, this paper also drew some interesting conclusions, which will benefit further studies on indoor navigation systems for shopping malls: (1) Both vertical elevators and horizontal escalators are important means of vertical transportation in shopping malls. Although vertical elevators are more difficult to find than horizontal escalators, users prefer to use vertical elevators, which may be related to users’ beliefs that the vertical elevator is faster. (2) Users prefer that the navigation system can indicate the passage to the desired space when reaching a certain destination, such as buying milk tea and other beverages along the way when going to the cinema, but users who are not as interested will avoid certain spaces. (3) This paper finds the correlation between “gender”, “age”, “occupation”, and users’ behaviors in shopping malls. For example, due to the singularity of moving lines, retired groups do not care about the indoor navigation signs of shopping malls. (4) Retirees over the age of 50 are not the target users of indoor navigation systems in shopping malls.
There are still some deficiencies in this paper. The functions formulated in the questionnaire survey are still insufficient, and the multi-source heterogeneous data fusion and application in the design of shopping mall indoor navigation systems are not fully explored. In future work, more in-depth research will be carried out on these two aspects.